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2. TRIBOLOGY INTERFACE OVER DIGITAL TECHNOLOGIES AND ENVISAGING TRIBOLOGY WITH PATENT LANDSCAPE — A QUEER REVIEW.
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RAJAKUMARESWARAN, V., CHINTHAMU, NARENDER, MURALI, M., and DEVARAJAN, BALAJI
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DIGITAL technology , *ARTIFICIAL neural networks , *TRIBOLOGY , *MACHINE learning , *ARTIFICIAL intelligence , *SUPPORT vector machines , *DEEP learning - Abstract
Digital technologies sustain today's world. Every part of the world is working towards digital technologies, which none of us can eliminate. Enormous growth is achieved only by unexpected acceleration by digital technologies, including the Internet of Everything (IoE), Artificial Neural Networks (ANN), Machine Learning (ML), Internet of Things (IoT), Artificial Intelligence (AI), Deep Learning (DL), and many more. These technologies started occupying all the engineering sectors, including manufacturing. This paper focuses on tribology analysis related to manufacturing concerning various digital manufacturing technologies. The paper narration includes Tribology using digital technologies wherein the journals and patent landscape analysis abet them. In trend, Tribology utilizes all these technologies today and envisages its growth with the predominant technological invention in the border view. The survey of various literature reveals that only three digital technologies, including AI, ML, and ANN, are used by tribologists around the globe. Other Technologies like Evolutionary Algorithm (EA), Support Vector Machine (SVM), and Adaptive Neuro-Fuzzy Interference Systems (ANFIS) are not used predominantly. [ABSTRACT FROM AUTHOR]
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- 2024
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3. Taking play and tinkering seriously in AI education: cases from Drag vs AI teen workshops.
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Ruppert, Janet, Velazquez-Ramos, Diego, Roque, Ricarose, and Shapiro, R. Benjamin
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ARTIFICIAL intelligence , *TEENAGERS , *TECHNICAL education , *MEDIA art , *ART materials - Abstract
Learning around artificial intelligence (AI)-powered technologies that attends to power is an urgent and widely felt priority among the learning sciences and CS ed broadly. Popular approaches to AI education focus on technical skills, with far less theoretical and practical work around critical and justice-centered AI learning. Adding to this literature, we discuss tool design and observed interactions in Drag vs AI workshops, where participants use hands-on makeup art as a medium for fooling, subverting, and refusing facial recognition. Our broader analysis asks how participants make sense of the technical and political aspects of AI, as they interact with AI through the Drag vs AI workshops' modes of aesthetic transformation, tinkering, and resistance. In this paper, we focus on participants' embodied algorithmic tinkering with AI and affordances for justice-centered computing education. Our analysis highlights how tinkering and play modes of interaction with AI materials can promote critical and agentive learning. [ABSTRACT FROM AUTHOR]
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- 2024
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4. IoT-Enabled Deep Learning Algorithm for Estimation of State-of-Charge of Lithium-ion Batteries.
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Pushpavanam, B., Kalyani, S., Prasanna, M. Arul, and Sangaiah, Arun Kumar
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MACHINE learning , *DEEP learning , *LITHIUM-ion batteries , *ELECTRIC vehicles , *BATTERY management systems , *HYBRID electric vehicles - Abstract
Battery Management System (BMS) functions to monitor individual cell in a battery pack and its crucial task is to maintain stability throughout the battery pack. The BMS is responsible for maintaining the safety of the battery as well as not to harm the user or environment. The parameters that are to be monitored in a battery are Voltage, Current and Temperature. With the collected data, BMS carefully monitors the charging–discharging behavior of the battery particularly in the Lithium-ion (Li-ion) batteries in which charging and discharging behavior are completely different. This paper proposes a real-time IOT connected deep learning algorithm for estimation of State-of-Charge (SoC) of Li-ion batteries. This paper provides unique objectives and congruence between model-based conventional methods and state-of-the-art deep learning algorithm, specifically Feed Forward Neural Network (FNN) which is nonRecurrent. This paper also highlights the advantages of Internet-of-Things (IoT) connected deep learning algorithm for estimation of State-of-Charge of Li-ion batteries in Hybrid Electric Vehicles (HEVs) and Electric Vehicles (EVs). The major advantage of the proposed method is that the Artificial Intelligence (AI)-based techniques aim to bring the estimation error less than 2% at a low cost and time without the model of the battery, at par with conventional method of Extended Kalman Filter (EKF) which is the best ever practical estimation theory. Another advantage of the proposed method is that in an abnormal condition (i.e., Unsafe Temperature) the IF This Then That (IFTTT) IoT mobile application interfaced with BMS through ThingSpeak cloud, sends a notification alert to the battery expert or to the user prior to an emergency. Finally, the real-time data of the battery parameters are collected through ThingSpeak cloud platform for future research and analysis. [ABSTRACT FROM AUTHOR]
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- 2024
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5. The Future of Women in Technology: Challenges and Recommendations.
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Oldfield, Marie, Brett, Jan, Baxter, Lynn, Bacon, Liz, Ward, Joan, and Ross, Margaret
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WOMEN in technology , *AUTOMATION , *SEX discrimination , *EMPIRICAL research , *ROLE models - Abstract
When only women turn up to a panel on challenges for women in technology, how do we then reach out to industry, academia and government to encourage them to listen to the current challenges experienced by women in tech. Technology is rapidly changing and we are seeing women disadvantaged by less training opportunities, lack of role models, perceived penalties for taking time off to have children or discharge caring responsibilities as well as the risk that their jobs are subject to more automation. Multiple workshops at the Institute of Science and Technology highlighted significant challenges for women in tech, the data from our empirical study illustrates these challenges in detail. With the workplace still male dominated and the landscape changing rapidly, women have a significant role to play and we need to ensure that role is not only facilitated but the existing challenges are mitigated. This is a discussion paper with empirical data that illustrates challenges currently experienced by women in tech and how we can move forward to ensure not only equal opportunity but remove some of the challenges currently experienced. In this paper we have not considered the same impact on men who take career breaks for reasons of caring responsibilities. [ABSTRACT FROM AUTHOR]
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- 2024
6. Expert responsibility in AI development.
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Hedlund, Maria and Persson, Erik
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ARTIFICIAL intelligence , *RESEARCH questions , *RESPONSIBILITY - Abstract
The purpose of this paper is to discuss the responsibility of AI experts for guiding the development of AI in a desirable direction. More specifically, the aim is to answer the following research question: To what extent are AI experts responsible in a forward-looking way for effects of AI technology that go beyond the immediate concerns of the programmer or designer? AI experts, in this paper conceptualised as experts regarding the technological aspects of AI, have knowledge and control of AI technology that non-experts do not have. Drawing on responsibility theory, theories of the policy process, and critical algorithm studies, we discuss to what extent this capacity, and the positions that these experts have to influence the AI development, make AI experts responsible in a forward-looking sense for consequences of the use of AI technology. We conclude that, as a professional collective, AI experts, to some extent, are responsible in a forward-looking sense for consequences of use of AI technology that they could foresee, but with the risk of increased influence of AI experts at the expense of other actors. It is crucial that a diversity of actors is included in democratic processes on the future development of AI, but for this to be meaningful, AI experts need to take responsibility for how the AI technology they develop affects public deliberation. [ABSTRACT FROM AUTHOR]
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- 2024
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7. Robot wars: Autonomous drone swarms and the battlefield of the future.
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King, Anthony
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LETHAL autonomous weapons , *WEAPONS systems , *AUTONOMOUS robots , *REVOLUTIONS - Abstract
We seem to be on the cusp of an AI-driven revolution in military affairs. Scholars have explored many aspects of this revolution but one of the most vibrant debates has addressed the question of lethal autonomous weapons. Some scholars believe that autonomous weapons, and especially autonomous drone swarms, are about to colonise the battlefield. This paper assesses this argument. It identifies three common mistakes in discussions of lethal autonomy. Scholars overestimate the capability of autonomous drone swarms. They underestimate their dependence on other weapon systems. Finally, they presume that autonomous weapons will favour the offence. This paper rejects all three claims. [ABSTRACT FROM AUTHOR]
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- 2024
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8. Algorithms Don’t Have A Future: On the Relation of Judgement and Calculation.
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Stader, Daniel
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This paper is about the opposite of judgement and calculation. This opposition has been a traditional anchor of critiques concerned with the rise of AI decision making over human judgement. Contrary to these approaches, it is argued that human judgement is not and cannot be replaced by calculation, but that it is human judgement that contextualises computational structures and gives them meaning and purpose. The article focuses on the epistemic structure of algorithms and artificial neural networks to find that they always depend on human judgement to be related to real life objects or purposes. By introducing the philosophical concept of judgement, it becomes clear that the property of judgement to provide meaning and purposiveness is based on the temporality of human life and the ambiguity of language, which quantitative processes lack. A juxtaposition shows that calculations and clustering can be used and referred to in more or less prejudiced and reflecting as well as opaque and transparent ways, but thereby always depend on human judgement. The paper clearly asserts that the transparency of AI is necessary for their autonomous use. This transparency requires the explicitness of the judgements that constitute these computational structures, thereby creating an awareness of the conditionality of such epistemic entities. [ABSTRACT FROM AUTHOR]
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- 2024
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9. Generative Pre-Trained Transformer-Empowered Healthcare Conversations: Current Trends, Challenges, and Future Directions in Large Language Model-Enabled Medical Chatbots.
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Chow, James C. L., Wong, Valerie, and Li, Kay
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ARTIFICIAL intelligence , *CHATBOTS , *PRIVACY , *NATURAL language processing , *MACHINE learning - Abstract
This review explores the transformative integration of artificial intelligence (AI) and healthcare through conversational AI leveraging Natural Language Processing (NLP). Focusing on Large Language Models (LLMs), this paper navigates through various sections, commencing with an overview of AI's significance in healthcare and the role of conversational AI. It delves into fundamental NLP techniques, emphasizing their facilitation of seamless healthcare conversations. Examining the evolution of LLMs within NLP frameworks, the paper discusses key models used in healthcare, exploring their advantages and implementation challenges. Practical applications in healthcare conversations, from patient-centric utilities like diagnosis and treatment suggestions to healthcare provider support systems, are detailed. Ethical and legal considerations, including patient privacy, ethical implications, and regulatory compliance, are addressed. The review concludes by spotlighting current challenges, envisaging future trends, and highlighting the transformative potential of LLMs and NLP in reshaping healthcare interactions. [ABSTRACT FROM AUTHOR]
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- 2024
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10. A Survey of AI Techniques in IoT Applications with Use Case Investigations in the Smart Environmental Monitoring and Analytics in Real-Time IoT Platform.
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Panduman, Yohanes Yohanie Fridelin, Funabiki, Nobuo, Fajrianti, Evianita Dewi, Fang, Shihao, and Sukaridhoto, Sritrusta
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ENVIRONMENTAL monitoring , *ARTIFICIAL intelligence , *IMAGE recognition (Computer vision) , *INTERNET of things , *NATURAL language processing , *AUDITORY perception - Abstract
In this paper, we have developed the SEMAR (Smart Environmental Monitoring and Analytics in Real-Time) IoT application server platform for fast deployments of IoT application systems. It provides various integration capabilities for the collection, display, and analysis of sensor data on a single platform. Recently, Artificial Intelligence (AI) has become very popular and widely used in various applications including IoT. To support this growth, the integration of AI into SEMAR is essential to enhance its capabilities after identifying the current trends of applicable AI technologies in IoT applications. In this paper, we first provide a comprehensive review of IoT applications using AI techniques in the literature. They cover predictive analytics, image classification, object detection, text spotting, auditory perception, Natural Language Processing (NLP), and collaborative AI. Next, we identify the characteristics of each technique by considering the key parameters, such as software requirements, input/output (I/O) data types, processing methods, and computations. Third, we design the integration of AI techniques into SEMAR based on the findings. Finally, we discuss use cases of SEMAR for IoT applications with AI techniques. The implementation of the proposed design in SEMAR and its use to IoT applications will be in future works. [ABSTRACT FROM AUTHOR]
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- 2024
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11. Reducing the contingency of the world: magic, oracles, and machine-learning technology.
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Larsson, Simon and Viktorelius, Martin
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MACHINE learning , *MAGIC , *CARGO ships , *PROPULSION systems , *ARTIFICIAL intelligence - Abstract
The concept of magic is frequently used to discuss technology, a practice considered useful by some with others arguing that viewing technology as magic precludes a proper understanding of technology. The concept of magic is especially prominent in discussions of artificial intelligence (AI) and machine learning (ML). Based on an anthropological perspective, this paper juxtaposes ML technology with magic, using descriptions drawn from a project on an ML-powered system for propulsion control of cargo ships. The paper concludes that prior scholarly work on technology has failed to both define magic adequately and use research into magic. It also argues that although the distinction between ML technology and magic is important, recognition of the similarities is useful for understanding ML technology. [ABSTRACT FROM AUTHOR]
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- 2024
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12. Optimizing Micro Gas Turbine Operation in a Microgrid System With Natural Gas and Hydrogen Fuel: An Artificial Intelligence-Based Approach.
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Banihabib, Reyhaneh, Fadnes, Fredrik Skaug, Assadi, Mohsen, and Bensmann, Boris
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In the coming years, decentralized power generation systems with renewables are expected to take a leading role, and micro gas turbines will serve as backup sources to compensate for times of low inputs from other sources. In order to deal with the unpredictable energy inputs from renewables, the micro gas turbine must be capable of running under varying load conditions and making fast transitions between them. The operation of a micro gas turbine in an integrated microgrid (MG) has the potential to reduce operational costs and ensure the delivery of demanded heat and power to consumers. This paper investigates the operation of a micro gas turbine in a MG, serving as a supplementary power source for a municipal building. The building's required energy is initially provided by wind turbine power, and the micro gas turbine serves as a backup source during times of wind power deficiency. The micro gas turbine can operate using a natural gas/hydrogen fuel blend ranging from zero to 100% hydrogen. Furthermore, a water electrolyzer with a hydrogen tank is available to operate as a storage system within the MG. The study's results demonstrate the economic and environmental benefits of using hydrogen storage and optimizing operational planning in the MG. The primary objective of the paper is to highlight the feasibility and benefits of employing micro gas turbines and hydrogen storage systems within a MG as a renewable energy backup power source. [ABSTRACT FROM AUTHOR]
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- 2024
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13. Vox Populi, Vox ChatGPT: Large Language Models, Education and Democracy.
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Zuber, Niina and Gogoll, Jan
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LANGUAGE models , *CHATGPT , *GENERATIVE artificial intelligence , *ARTIFICIAL intelligence , *DEMOCRACY - Abstract
In the era of generative AI and specifically large language models (LLMs), exemplified by ChatGPT, the intersection of artificial intelligence and human reasoning has become a focal point of global attention. Unlike conventional search engines, LLMs go beyond mere information retrieval, entering into the realm of discourse culture. Their outputs mimic well-considered, independent opinions or statements of facts, presenting a pretense of wisdom. This paper explores the potential transformative impact of LLMs on democratic societies. It delves into the concerns regarding the difficulty in distinguishing ChatGPT-generated texts from human output. The discussion emphasizes the essence of authorship, rooted in the unique human capacity for reason—a quality indispensable for democratic discourse and successful collaboration within free societies. Highlighting the potential threats to democracy, this paper presents three arguments: the Substitution argument, the Authenticity argument, and the Facts argument. These arguments highlight the potential risks that are associated with an overreliance on LLMs. The central thesis posits that widespread deployment of LLMs may adversely affect the fabric of a democracy if not comprehended and addressed proactively and properly. In proposing a solution, we advocate for an emphasis on education as a means to mitigate risks. We suggest cultivating thinking skills in children, fostering coherent thought formulation, and distinguishing between machine-generated output and genuine, i.e., human, reasoning. The focus should be on the responsible development and usage of LLMs, with the goal of augmenting human capacities in thinking, deliberating and decision-making rather than substituting them. [ABSTRACT FROM AUTHOR]
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- 2024
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14. AI-based monocular pose estimation for autonomous space refuelling.
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Rondao, Duarte, He, Lei, and Aouf, Nabil
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ARTIFICIAL intelligence , *CONVOLUTIONAL neural networks , *FUELING , *ORBITAL rendezvous (Space flight) , *SPACE vehicle docking , *POSE estimation (Computer vision) , *DEEP learning - Abstract
Cameras are rapidly becoming the choice for on-board sensors towards space rendezvous due to their small form factor and inexpensive power, mass, and volume costs. When it comes to docking, however, they typically serve a secondary role, whereas the main work is done by active sensors such as lidar. This paper documents the development of a proposed AI-based (artificial intelligence) navigation algorithm intending to mature the use of on-board visible wavelength cameras as a main sensor for docking and on-orbit servicing (OOS), reducing the dependency on lidar and greatly reducing costs. Specifically, the use of AI enables the expansion of the relative navigation solution towards multiple classes of scenarios, e.g., in terms of targets or illumination conditions, which would otherwise have to be crafted on a case-by-case manner using classical image processing methods. Multiple convolutional neural network (CNN) backbone architectures are benchmarked on synthetically generated data of docking manoeuvres with the International Space Station (ISS), achieving position and attitude estimates close to 1 % range-normalised and 1 deg, respectively, an established rule of thumb for the navigation measurement accuracy during final approach. The integration of the solution with a physical prototype of the refuelling mechanism is validated in laboratory using a robotic arm to simulate a berthing procedure. • A novel AI-based solution for spacecraft docking and refuelling is presented. • First demonstration of deep learning for vision-based pose estimation in docking. • Various CNN backbones are benchmarked on photorealistic ISS refuelling datasets. • ResNet-101 reports average 1.19% error in position, 0.29 ∘ in attitude per trajectory. • Prototypes of the developed mechanism are validated in lab with 7-DOF manipulator. [ABSTRACT FROM AUTHOR]
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- 2024
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15. Malnutrition risk assessment using a machine learning‐based screening tool: A multicentre retrospective cohort.
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Parchure, Prathamesh, Besculides, Melanie, Zhan, Serena, Cheng, Fu‐yuan, Timsina, Prem, Cheertirala, Satya Narayana, Kersch, Ilana, Wilson, Sara, Freeman, Robert, Reich, David, Mazumdar, Madhu, and Kia, Arash
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MALNUTRITION diagnosis , *RISK assessment , *DIETETICS , *MALNUTRITION , *MEDICAL quality control , *HUMAN services programs , *HOSPITAL care , *NUTRITIONAL assessment , *ARTIFICIAL intelligence , *RETROSPECTIVE studies , *DESCRIPTIVE statistics , *LONGITUDINAL method , *PRE-tests & post-tests , *RESEARCH , *METROPOLITAN areas , *MACHINE learning , *QUALITY assurance , *LENGTH of stay in hospitals , *ALGORITHMS , *DISEASE risk factors ,ELECTRONIC health record standards - Abstract
Background: Malnutrition is associated with increased morbidity, mortality, and healthcare costs. Early detection is important for timely intervention. This paper assesses the ability of a machine learning screening tool (MUST‐Plus) implemented in registered dietitian (RD) workflow to identify malnourished patients early in the hospital stay and to improve the diagnosis and documentation rate of malnutrition. Methods: This retrospective cohort study was conducted in a large, urban health system in New York City comprising six hospitals serving a diverse patient population. The study included all patients aged ≥ 18 years, who were not admitted for COVID‐19 and had a length of stay of ≤ 30 days. Results: Of the 7736 hospitalisations that met the inclusion criteria, 1947 (25.2%) were identified as being malnourished by MUST‐Plus‐assisted RD evaluations. The lag between admission and diagnosis improved with MUST‐Plus implementation. The usability of the tool output by RDs exceeded 90%, showing good acceptance by users. When compared pre‐/post‐implementation, the rate of both diagnoses and documentation of malnutrition showed improvement. Conclusion: MUST‐Plus, a machine learning‐based screening tool, shows great promise as a malnutrition screening tool for hospitalised patients when used in conjunction with adequate RD staffing and training about the tool. It performed well across multiple measures and settings. Other health systems can use their electronic health record data to develop, test and implement similar machine learning‐based processes to improve malnutrition screening and facilitate timely intervention. Key points/Highlights: Malnutrition is prevalent among hospitalised patients and frequently goes unrecognised, with the potential for severe sequelae. Accurate diagnosis, documentation and treatment of malnutrition have the potential of having a positive impact on morbidity rate, mortality rate, length of inpatient stay, readmission rate and hospital revenue. The tool's successful application highlights its potential to optimise malnutrition screening in healthcare systems, offering potential benefits for patient outcomes and hospital finances. [ABSTRACT FROM AUTHOR]
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- 2024
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16. Rethinking high-resolution remote sensing image segmentation not limited to technology: a review of segmentation methods and outlook on technical interpretability.
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Chong, Qianpeng, Ni, Mengying, Huang, Jianjun, Wei, Guangyi, Li, Ziyi, and Xu, Jindong
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REMOTE sensing , *IMAGE segmentation , *CONVOLUTIONAL neural networks , *OPTICAL remote sensing , *ARTIFICIAL intelligence , *TRANSFORMER models , *RESEARCH questions - Abstract
The intelligent segmentation of high-resolution remote sensing (HRS) image, also called as dense prediction task for HRS image, has been and will continue to be important research in the remote sensing community. In recent years, the growing wave of artificial intelligence (AI) technology has introduced innovative paradigms to this domain, yielding outstanding results and overcoming many challenges with conventional segmentation techniques. This paper provides a comprehensive review of these intelligent segmentation methodologies, including traditional pattern recognition, convolution neural network (CNN)-based, and Transformer-based techniques. However, the explosive but incomplete development of intelligent segmentation techniques also poses more challenges for earth observation experts, the most of which is the technical interpretability. Consequently, we consider these segmentation techniques in the aspect of explainable artificial intelligence (XAI). Data-centric XAI thinks the practical applications of the segmentation model while model-centric XAI will facilitate the understanding of decision-making processes and the adjustment of structural features. Moreover, this review identifies novel research questions and provides constructive insights and recommendations to HRS image segmentation tasks, which may shed new light on the intelligent segmentation methods within the remote sensing image understanding community. [ABSTRACT FROM AUTHOR]
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- 2024
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17. Didactic experiences in the public realm: AI, interactivity, and playfulness for empowering eco-change.
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Olgen, Burcu and Cucuzzella, Carmela
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Artificial Intelligence (AI) rapidly adapts to diverse audience engagement modes in Digital Arts, either interactive or non-interactive forms. These engagements create potential alliances for intelligent eco-didactic environments in the public realm. Studies show that interactivity positively affects the learning experience; hence, the coalition between AI and Digital Art has the potential to result in enhanced eco-art experiences. This collaboration could augment the eco-message and lead to behavior shift. This paper explores the interactive engagement modes in different art mediums to identify their eco-didactic potential. The study adopts a mixed methods approach, engaging with causal-comparative qualitative content analysis research. We collected secondary data from various mediums to define the characteristics of the engagement modes in eco-art, digital art, and AI artworks. Finally, we interviewed mixed-media artists to explore the technologies used in these art mediums, the different engagement modes they adopt, and eco-didactic possibilities. As a result, we found that incorporating aspects such as interactivity, coherence, aesthetics, playfulness, and meaning, can increase the impact of eco-didactic experiences. In addition, AI creates new possibilities for these experiences with its popularity and features such as real-time data utilization, personalization, and generative reciprocal dialogues which facilitate the understanding of complex environmental issues. [ABSTRACT FROM AUTHOR]
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- 2024
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18. Identifying Autism Gaze Patterns in Five-Second Data Records.
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Lencastre, Pedro, Lotfigolian, Maryam, and Lind, Pedro G.
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AUTISM spectrum disorders , *GAZE , *AUTISM , *VISION disorders , *EYE tracking - Abstract
One of the most challenging problems when diagnosing autism spectrum disorder (ASD) is the need for long sets of data. Collecting data during such long periods is challenging, particularly when dealing with children. This challenge motivates the investigation of possible classifiers of ASD that do not need such long data sets. In this paper, we use eye-tracking data sets covering only 5 s and introduce one metric able to distinguish between ASD and typically developed (TD) gaze patterns based on such short time-series and compare it with two benchmarks, one using the traditional eye-tracking metrics and one state-of-the-art AI classifier. Although the data can only track possible disorders in visual attention and our approach is not a substitute to medical diagnosis, we find that our newly introduced metric can achieve an accuracy of 93 % in classifying eye gaze trajectories from children with ASD surpassing both benchmarks while needing fewer data. The classification accuracy of our method, using a 5 s data series, performs better than the standard metrics in eye-tracking and is at the level of the best AI benchmarks, even when these are trained with longer time series. We also discuss the advantages and limitations of our method in comparison with the state of the art: besides needing a low amount of data, this method is a simple, understandable, and straightforward criterion to apply, which often contrasts with "black box" AI methods. [ABSTRACT FROM AUTHOR]
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- 2024
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19. Artificial Interpretation: An Investigation into the Feasibility of Archaeologically Focused Seismic Interpretation via Machine Learning.
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Fraser, Andrew Iain, Landauer, Jürgen, Gaffney, Vincent, and Zieschang, Elizabeth
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MACHINE learning , *LAST Glacial Maximum , *ARTIFICIAL intelligence , *LANDSCAPE archaeology , *REMOTE sensing , *ENERGY industries , *ARCHAEOLOGY - Abstract
The value of artificial intelligence and machine learning applications for use in heritage research is increasingly appreciated. In specific areas, notably remote sensing, datasets have increased in extent and resolution to the point that manual interpretation is problematic and the availability of skilled interpreters to undertake such work is limited. Interpretation of the geophysical datasets associated with prehistoric submerged landscapes is particularly challenging. Following the Last Glacial Maximum, sea levels rose by 120 m globally, and vast, habitable landscapes were lost to the sea. These landscapes were inaccessible until extensive remote sensing datasets were provided by the offshore energy sector. In this paper, we provide the results of a research programme centred on AI applications using data from the southern North Sea. Here, an area of c. 188,000 km2 of habitable terrestrial land was inundated between c. 20,000 BP and 7000 BP, along with the cultural heritage it contained. As part of this project, machine learning tools were applied to detect and interpret features with potential archaeological significance from shallow seismic data. The output provides a proof-of-concept model demonstrating verifiable results and the potential for a further, more complex, leveraging of AI interpretation for the study of submarine palaeolandscapes. [ABSTRACT FROM AUTHOR]
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- 2024
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20. Mobilizing social transformation with technology. The shaping of social processes since the development of industrial society and beyond: innovation input and social processes.
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Alfaraz, Claudio and Tully, Claus
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Technological development is a key factor for shaping social life, transforming the ways in which societies organize their production, mobility and communication processes. Since the beginning of industrialization, the pace of the transformations brought about by technological change has increased dramatically, and has further accelerated since the advent of the new digital technologies. These development processes has also impacts in terms of social, economic and environmental costs, a fact that has been addressed in the past few decades by various social movements as well as theoreticians, becoming a key issue in political and social discussion agendas. In this paper, we outline a historical perspective of these changes and their effects, from pre-industrial, industrial, post-Fordism and network societies, and we focus on the mobilizing potential of technological change. We analyze the role that technological interfaces play today in social transformation, as well as the implications for our present day that our interactions become increasingly intermediated by digital technologies. Finally, we discuss digital technologies and their impacts on social inequity. We argue that a public and democratic agenda comprising both development and technological issues should be put in place for guaranteeing social development processes. [ABSTRACT FROM AUTHOR]
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- 2024
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21. Design and implementation of an AI‐enabled visual report tool as formative assessment to promote learning achievement and self‐regulated learning: An experimental study.
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Liao, Xiaofang, Zhang, Xuedi, Wang, Zhifeng, and Luo, Heng
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SELF-regulated learning , *FORMATIVE evaluation , *PSYCHOLOGICAL feedback , *ACADEMIC achievement , *DATA visualization , *DESIGN techniques , *SYNTHETIC biology - Abstract
Formative assessment is essential for improving teaching and learning, and AI and visualization techniques provide great potential for its design and delivery. Using NLP, cognitive diagnostic and visualization techniques designed to analyse and present students' monthly exam data, we developed an AI‐enabled visual report tool comprising six modules and conducted an empirical study of its effectiveness in a high school biology classroom. A total of 125 students in a ninth‐grade biology course were assigned to a treatment group (n = 63) receiving AI‐enabled visual reports as the intervention and a control group (n = 62) receiving overall oral feedback from the teacher. We present the main statistical results of the within‐subjects design and the between‐subjects design respectively, to better capture the main findings. Repeated measures ANOVA revealed a significant interaction effect of intervention and time on learning achievement, and the paired‐sample Wilcoxon test indicated that the treatment group had experienced increasing learning anxiety (Cohen's d = 0.203, p = 0.046) and self‐efficacy (Cohen's d = 1.793, p = 0.000) over time. Moreover, we conducted a series of non‐parametric tests to compare the effects of AI‐enabled visual reports and teacher feedback, but found no significant differences except for an increased self‐efficacy (Cohen's d = 0.312, p = 0.046). Additionally, we had the students in the treatment group rate their favourable modules in the AI‐enabled visual report and provide evaluative feedback. The study results provide important insights into the design and implementation of effective formative assessment supported by artificial AI and visualization techniques. Practitioner notesWhat is already known about this topic Formative assessment is essential for improving teaching and learning.Traditional formative assessment tools lack accurate data‐oriented assessment and usability.AI and visualization techniques have great potential for formative assessment.What this paper adds This study designs and implements an AI‐enabled visual report tool that generates data‐driven, user‐friendly reports.The AI‐enabled visual report can not only enhance students' learning achievement and self‐regulated learning over time but also increase their test anxiety.The AI‐enabled visual report has a comparable effect with teacher feedback but leads to increased self‐efficacy.Implications for practice and/or policy We recommend using the AI‐enabled visual report in large‐size classes for its overall positive effects on both learning achievement and self‐regulated learning.We recommend using the AI‐enabled visual report over teacher feedback for its capacity to enhance students' self‐efficacy.We recommend prioritizing the modules of Performance Ranking, Personal Mastery and Knowledge Alert when designing the AI‐enabled visual report. [ABSTRACT FROM AUTHOR]
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- 2024
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22. Real sparks of artificial intelligence and the importance of inner interpretability.
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Grzankowski, Alex
- Abstract
The present paper looks at one of the most thorough articles on the intelligence of GPT, research conducted by engineers at Microsoft. Although there is a great deal of value in their work, I will argue that, for familiar philosophical reasons, their methodology, ‘Black-box Interpretability’, is wrongheaded. But there is a better way. There is an exciting and emerging discipline of ‘Inner Interpretability’ (and specifically Mechanistic Interpretability) that aims to uncover the internal activations and weights of models in order to understand what they represent and the algorithms they implement. Black-box Interpretability fails to appreciate that how processes are carried out matters when it comes to intelligence and understanding. I can’t pretend to have a full story that provides both necessary and sufficient conditions for being intelligent, but I do think that Inner Interpretability dovetails nicely with plausible philosophical views of what intelligence requires. So the conclusion is modest, but the important point in my view is seeing how to get the research on the right track. Towards the end of the paper, I will show how some of the philosophical concepts can be used to further refine how Inner Interpretability is approached. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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23. Knowledge Ethics: Conceptual Preliminaries Scope and Justification.
- Author
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Mooradian, Norman
- Subjects
- *
ETHICS , *INFORMATION economy , *JUSTIFICATION (Theory of knowledge) , *JUSTIFICATION (Ethics) - Abstract
This paper lays out the conceptual groundwork for a long-term project examining ethical issues raised when addressing the value of knowledge to a knowledge economy. The project includes a series of papers on specific topics that interrelate to the subjects of knowledge, ethics and organizations. While some of the planned articles for the project will have a practical focus, others, such as this one, will be conceptual in nature. The following outlines selected key concepts for an ethics of knowledge and their relationship with cognate areas of inquiry and practice. [ABSTRACT FROM AUTHOR]
- Published
- 2024
24. Algorithmic News Versus Non-Algorithmic News: Towards a Principle-based Artificial Intelligence (AI) Theoretical Framework of News Media.
- Author
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Scheffauer, Rebecca, Gil de Zúñiga, Homero, and Correa, Teresa
- Abstract
Technological media effects scholarship in the field of journalism and communication is experiencing a reinvigorated blooming due to the role of Artificial Intelligence (AI) and algorithm-based information. From news production to distribution and consumption, the whole journalistic chain of information media ecosystems and the principles that govern them have all been deeply transformed with the advent of AI and algorithmic tools. Drawing from wellestablished normative principles that have guided the journalistic profession, this paper seeks to synthesize the current state of research on AI and algorithm-based news by providing a principle-based theoretical framework of news media. In doing so, the paper organizes a comparison between algorithmic news versus non-algorithmic news according to three foundational pillars sustaining journalism research: news production, selection, and effects thereof. [ABSTRACT FROM AUTHOR]
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- 2024
- Full Text
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25. Buddhist Transformation in the Digital Age: AI (Artificial Intelligence) and Humanistic Buddhism.
- Author
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Zheng, Yutong
- Subjects
- *
DIGITAL technology , *DIGITAL transformation , *ARTIFICIAL intelligence , *BUDDHISM , *TECHNOLOGICAL innovations , *SIMILARITY (Psychology) - Abstract
Humanistic Buddhism is one of the mainstreams of modern Buddhism, with special emphasis on the humanistic dimension. With the development of artificial intelligence (AI) technology, Humanistic Buddhism is also at an important stage of modernization and transformation, thus facing a continuous negotiation between religious values and technological innovations. This paper first argues that AI is technically beneficial to the propagation of Buddhism by citing several cases in which AI technology has been used in Buddhism. Then, by comparing Master Hsing Yun's Buddhist ethics to "Posthuman" ethics, it points out that the theories of Humanistic Buddhism share similarities with AI and Posthuman ethics. Among them, Master Hsing Yun's theory of "the nature of insentient beings" provides an important theoretical reference for the question of "whether AI can become a Buddha". From the technical and ethical dimensions, it points out that the interaction between Humanistic Buddhism and AI can promote original uses or implementations of AI technology. However, it should also be noted that compared to the cases of "Artificial Narrow Intelligence"discussed in the paper, the "Strong AI" could lead to much more ethical crises. It is also likely to cause the cult of science and technology, and thus subvert the humanistic tradition of Buddhism with a new instrumental rationality. In addition, there are some potential pitfalls that Humanistic Buddhism may encounter when using AI. Hence, while it is necessary to encourage the use of technologies such as AI in contemporary Buddhism, it is also important for Buddhism to keep a critical distance from digital technologies. [ABSTRACT FROM AUTHOR]
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- 2024
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26. Teaching in the Age of AI/ChatGPT in Mental-Health-Related Fields.
- Author
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Rajaei, Afarin
- Subjects
- *
CHATGPT , *ARTIFICIAL intelligence , *MENTAL health education , *TECHNOLOGICAL innovations , *LEARNING - Abstract
In recent years, the fusion of Artificial Intelligence (AI) with traditional sectors has catalyzed a paradigm shift that extends beyond technological advancements and reaches into the core of human learning and development. One such domain undergoing significant transformation is mental health education. This short conceptual paper seeks to examine the intricate relationship between AI and education in the context of mental health studies, shedding light on the challenges, opportunities, and ethical considerations that arise as teaching evolves in the Age of AI. This paper is not intended to serve as THE definitive solution to inquiries regarding the integration of AI/ChatGPT in mental health education. Rather, its purpose is to provide AN approach to contemplating this matter and to initiate further discussions within mental health-related fields about the utilization of AI and ChatGPT in education, given the persistent prominence of AI. [ABSTRACT FROM AUTHOR]
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- 2024
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27. Transformation and Development of Intangible Cultural Heritage through Technology.
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WANG Wei and XU Xin
- Abstract
[Purpose/Significance] In recent years, the national leadership has attached great importance to the inheritance and innovation of China's excellent traditional culture, and the concepts of creative transformation and innovative development are constantly evolving. The Ministry of Science and Technology of China, among six departments, jointly formulated the "Guidelines for Promoting the Deep Integration of Culture and Technology", proposing to form a "cultural and technological integration innovation system covering key areas and critical links, to achieve the goal of in-depth integration of culture and technology". Intangible cultural heritage (ICH), as an essential part of China's excellent traditional culture, plays a crucial role in consolidating the sense of the Chinese national community and enhancing cultural self-confidence. This paper discusses the research paths for the creative transformation and innovative development of ICH in the context of culture and technology integration, emphasizing the significant role of modern technology in promoting the transformation and development of ICH. [Method/Process] The paper first interprets the connotation of "creative transformation and innovative development" in ICH, and clarifies the theoretical foundation and guiding principles of "creative transformation and innovative development" in ICH. It then analyzes the significant contributions of "creative transformation and innovative development" in ICH to society, economy, and cultural diversity, as well as the categorized scenarios of technology empowerment in "creative transformation and innovative development" of ICH. It discusses six types of common key technologies that enable technology-driven "creative transformation and innovative development" in ICH, including digital technology, virtual and augmented reality, big data analysis, artificial intelligence, cloud computing, and the Internet of Things. It summarizes a three-tier framework system for technology-driven "creative transformation and innovative development" in ICH, namely the method layer, technology layer, and object layer, forming a progressive relationship from theory to technology and then to specific practices. Finally, by integrating the specific example of the traditional craft of Wuhu iron painting, it demonstrates the facilitating role of modern technology in the "creative transformation and innovative development" of ICH and its impact on the protection, inheritance, and innovative development of ICH. [Results/Conclusions] The findings suggest that technological means can effectively protect and inherit ICH, facilitating its creative transformation and innovative development. However, it also requires careful consideration and precautions against the potential risks and challenges that modern technology poses to ICH projects in terms of intellectual property rights, the digital divide, and the indirect nature of experiences. Looking to the future, with the emergence of more innovative technologies, modern technology will not only help to protect and pass on traditional culture but also give new connotations and expressions to traditional culture, ensuring that its unique value and charm continue to play out in an ever-changing world. [ABSTRACT FROM AUTHOR]
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- 2024
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28. Advantage of whole-mount histopathology in prostate cancer: current applications and future prospects.
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Duan, Lewei, Liu, Zheng, Wan, Fangning, and Dai, Bo
- Subjects
- *
PROSTATE cancer , *HISTOPATHOLOGY , *IMAGE registration , *CLINICAL medicine , *COMPUTER-assisted image analysis (Medicine) , *ARTIFICIAL intelligence - Abstract
Background: Whole-mount histopathology (WMH) has been a powerful tool to investigate the characteristics of prostate cancer. However, the latest advancement of WMH was yet under summarization. In this review, we offer a comprehensive exposition of current research utilizing WMH in diagnosing and treating prostate cancer (PCa), and summarize the clinical advantages of WMH and outlines potential on future prospects. Methods: An extensive PubMed search was conducted until February 26, 2023, with the search term "prostate", "whole-mount", "large format histology", which was limited to the last 4 years. Publications included were restricted to those in English. Other papers were also cited to contribute a better understanding. Results: WMH exhibits an enhanced legibility for pathologists, which improved the efficacy of pathologic examination and provide educational value. It simplifies the histopathological registration with medical images, which serves as a convincing reference standard for imaging indicator investigation and medical image-based artificial intelligence (AI). Additionally, WMH provides comprehensive histopathological information for tumor volume estimation, post-treatment evaluation, and provides direct pathological data for AI readers. It also offers complete spatial context for the location estimation of both intraprostatic and extraprostatic cancerous region. Conclusions: WMH provides unique benefits in several aspects of clinical diagnosis and treatment of PCa. The utilization of WMH technique facilitates the development and refinement of various clinical technologies. We believe that WMH will play an important role in future clinical applications. [ABSTRACT FROM AUTHOR]
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- 2024
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29. The future of condition based monitoring: risks of operator removal on complex platforms.
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Oldfield, Marie, McMonies, Murray, and Haig, Ella
- Subjects
- *
AUTOMATIC control systems , *AEROSPACE engineers , *AEROSPACE engineering , *MACHINISTS , *BOEING 737 (Jet transport) - Abstract
Complex systems are difficult to manage, operate and maintain. This is why we see teams of highly specialised engineers in industries such as aerospace, nuclear and subsurface. Condition based monitoring is also employed to maximise the efficiency of extensive maintenance programmes instead of using periodic maintenance. A level of automation is often required in such complex engineering platforms in order to effectively and safely manage them. Advances in Artificial Intelligence related technologies have offered greater levels of automation but this potentially pivots the weight of decision making away from the operator to the machine. Implementing AI or complex algorithms into a platform can mean that the Operators' control over the system is diminished or removed altogether. For example, in the Boeing 737 Air Max Disaster, AI had been added to a platform and removed the operators' control of the system. This meant that the operator could not then move outside the extremely reserved, algorithm defined, "envelope" of operation. This paper analyses the challenges of AI driven condition based monitoring where there is a potential to see similar consequences to those seen in control engineering. As the future of society becomes more about algorithm driven technology, it is prudent to ask, not only whether we should implement AI into complex systems, but how this can be achieved ethically and safely in order to reduce risk to life. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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30. Is Chatgpt a menace for creative writing ability? An experiment.
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Niloy, Ahnaf Chowdhury, Akter, Salma, Sultana, Nayeema, Sultana, Jakia, and Rahman, Sayed Imran Ur
- Subjects
- *
DATA analysis , *ARTIFICIAL intelligence , *CONTENT analysis , *UNIVERSITIES & colleges , *DESCRIPTIVE statistics , *QUANTITATIVE research , *CREATIVE ability , *EXPERIMENTAL design , *PRE-tests & post-tests , *STATISTICS , *CONTENT mining , *COLLEGE students , *STUDENT attitudes , *WRITTEN communication ,RESEARCH evaluation - Abstract
Background: The increasing prevalence of Artificial Intelligence (AI) language models, exemplified by ChatGPT, has sparked inquiries into their influence on creative writing skills in educational contexts. This study aims to quantitatively investigate whether ChatGPT's use negatively affects university students' creative writing abilities, focusing on originality, content presentation, accuracy, and elaboration in essays. The research adopts an experimental approach to shed light on this concern. Objective: This study aims to quantitatively investigate whether the utilization of ChatGPT, an AI chatbot, adversely affects specific dimensions of creative writing skills among university students, with an emphasis on originality, content presentation, accuracy, and elaboration. Method: The experimental study involves 600 students from 10 universities, divided into a control and an experimental group (EGp). The EGp incorporates ChatGPT in their creative writing process as an intervention. The study evaluates originality, content presentation, accuracy, and elaboration, utilizing the Wilcoxon Signed‐Rank Test for analysis. Results and Conclusion: The findings reveal a detrimental association between ChatGPT use and university students' creative writing abilities. Analysing both machine‐based and human‐based assessments substantiates earlier qualitative observations regarding ChatGPT's adverse impact on creative writing. This study highlights the necessity of approaching AI integration, particularly in creative writing disciplines, with caution. While AI tools have merits, their integration should be thoughtful, considering the potential drawbacks. These insights inform future research and educational practices, guiding the effective incorporation of AI while nurturing students' writing skills. Lay Description: What is already known about this topic: ChatGPT poses an ethical dilemma regarding its use in the field of academiaQualitative claims and opinions have been raised in prior studies regarding its use in the creative writing processPrior studies have both supported and opposed its use but with very limited quantitative approaches while most of the opinions remain qualitativeSome prior studies opine in support of ChatGPT's ability as an authorSeveral factors measuring creativity has been identified by previous studies but a constructive approach in the light of advanced Artificial Intelligence (AI) based chatbots like ChatGPT is missing in such literature What this paper adds: An experimental approach to provide a valid quantitative proof of the qualitative claims over ChatGPT's detrimental effect towards creativity in writing, which was absent in prior studiesA multifactor‐based formula to measure creativity in a quantitative formA quantitative view of the factors that are affected in either a positive way or a negative way in a user by ChatGPT, providing a holistic picture to determine its extent of useA statistical and theoretical understanding over an unexplored topic like creative writing in the light of ChatGPTA quantitative proof why ChatGPT should not be considered as an author Implications for practice and/or policy: Educators may implement changes in assigning tasks to students compared to their earlier practices, based on the identified factors that are being affected negatively, to ensure ChatGPT does not hinder a student's creativity at a greater extentThe extent of using ChatGPT should be limited to self‐learning as positive effect was experienced through the experimentPolicymakers may use the findings of the study to impose strict policies in academia for ensuring academic integrity (Example: must use of plagiarism detecting software for checking scripts, assigning tasks to students which require more analytical abilities, providing tasks which are not properly readable by LLM's like ChatGPT such as image‐based questions, case studies etc.) [ABSTRACT FROM AUTHOR]
- Published
- 2024
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31. Precision medicine in sports application based on photonics and quantum computing with artificial intelligence.
- Author
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Yang, Kai
- Subjects
- *
INDIVIDUALIZED medicine , *QUANTUM computing , *MACHINE learning , *ARTIFICIAL intelligence , *SPORTS medicine , *QUANTUM computers - Abstract
Precision medicine techniques pinpoint the characteristics of people with uncommon treatment outcomes or distinct medical requirements. Artificial intelligence (AI) fuels the system's ability to think and learn, generates insights through complex computing and inference, and enhances clinical decision-making through enhanced intelligence. The main advantage of AI in sports medicine is its capacity for prediction. In order to forecast possible injuries, machine learning algorithms may examine enormous volumes of data, such as an athlete's training regimen, medical history, and performance indicators. A new area of study called photonic quantum information has emerged as a result of recent advancements in technology enabling the production, control, and detection of individual single photons. Realising single photon switches, creating photonic quantum circuits with specialised uses, and using new photonic states for optical metrology that goes beyond conventional optics are some examples of this advancement. Based on the author's previous and present efforts, the current state of photonic quantum information technology is reviewed in this review paper. Sports medicine professionals will need to have a basic working understanding of the strengths in the future, much way doctors presently need to understand the business of medicine. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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- View/download PDF
32. Covering artificial intelligence: the role of European Union, British, and American media outlets in generative AI Visibility.
- Author
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Alcaraz-Martínez, Rubén, Vállez, Mari, and Lopezosa, Carlos
- Subjects
- *
GENERATIVE artificial intelligence , *ARTIFICIAL intelligence , *SEARCH engine optimization , *DIGITAL media , *CHATGPT - Abstract
Artificial intelligence (AI) has emerged as one of the central topics of 2023 with extensive media coverage of the most relevant technologies and issues associated with this subject. In a highly competitive digital media landscape, search engine optimization (SEO) has become cybermedia’s primary strategy to increase visibility and attract more readers. The objective of this paper is to analyze the visibility of content published by the media relating to artificial intelligence, focusing on a selection of related keywords. The research also aims to investigate how this visibility has impacted both the technologies themselves and the analyzed media outlets. A total of 69 media outlets from 12 European Union countries, the United States, and the United Kingdom were examined. The results reveal a pronounced dominance of U.S. media, closely followed by Spanish media. There is an uneven distribution of media outlets across most of the countries analyzed, with two or three most of the of visibility. The search queries that contribute the most visibility to the analyzed media align with an informational intent, are of the long-tail type, and are associated with OpenAI technologies, particularly ChatGPT. Moreover, these queries are primarily found in news sections dedicated to science and technology. The findings underscore both the increasing interest in the subject and the effective SEO practices of certain media outlets. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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33. ChatGPT and the Technology-Education Tension: Applying Contextual Virtue Epistemology to a Cognitive Artifact.
- Author
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Cassinadri, Guido
- Abstract
According to virtue epistemology, the main aim of education is the development of the cognitive character of students (Pritchard, 2014, 2016). Given the proliferation of technological tools such as ChatGPT and other LLMs for solving cognitive tasks, how should educational practices incorporate the use of such tools without undermining the cognitive character of students? Pritchard (2014, 2016) argues that it is possible to properly solve this ‘technology-education tension’ (TET) by combining the virtue epistemology framework with the theory of extended cognition (EXT) (Clark and Chalmers, 1998). He argues that EXT enables us to consider tools as constitutive parts of the students’ cognitive system, thus preserving their cognitive character from technologically induced cognitive diminishment. The first aim of this paper is to show that this solution is not sufficient to solve the TET. Second, I aim to offer a complementary and more encompassing framework of tool-use to address the TET. Then, I apply it to the educational uses of ChatGPT as the most notable example of LLM, although my arguments can be extended to other generative AI systems. To do so, in Sect. 1.1, I present Pritchard’s framework of cognitive character and virtue epistemology applied in education, to which I am committed in this treatment. In Sects. 2 and 3, I respectively illustrate Pritchard’s (2014) solution to the TET, and I highlight the general limitations of his proposal. Thus, in Sect. 4.1 I characterize ChatGPT as a computational cognitive artifact using Fasoli’s (Fasoli, 2017, 2018) taxonomy of cognitive artifacts. In Sect. 4.2, I introduce my proposal, which combines Pritchard’s account of virtue epistemology with Fasoli’s (2017, 2018) taxonomy of cognitive artifacts to address the TET. Finally, in Sect. 5.1, I present some epistemically virtuous uses of ChatGPT in educational contexts. To conclude, I argue in favor of a multidisciplinary approach for analyzing educational activities involving AI technologies such as ChatGPT. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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34. Methods for using Bing's AI‐powered search engine for data extraction for a systematic review.
- Author
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Hill, James Edward, Harris, Catherine, and Clegg, Andrew
- Subjects
- *
ARTIFICIAL intelligence , *SEARCH engines , *DATA extraction , *NATURAL language processing , *ELECTRONIC data processing - Abstract
Data extraction is a time‐consuming and resource‐intensive task in the systematic review process. Natural language processing (NLP) artificial intelligence (AI) techniques have the potential to automate data extraction saving time and resources, accelerating the review process, and enhancing the quality and reliability of extracted data. In this paper, we propose a method for using Bing AI and Microsoft Edge as a second reviewer to verify and enhance data items first extracted by a single human reviewer. We describe a worked example of the steps involved in instructing the Bing AI Chat tool to extract study characteristics as data items from a PDF document into a table so that they can be compared with data extracted manually. We show that this technique may provide an additional verification process for data extraction where there are limited resources available or for novice reviewers. However, it should not be seen as a replacement to already established and validated double independent data extraction methods without further evaluation and verification. Use of AI techniques for data extraction in systematic reviews should be transparently and accurately described in reports. Future research should focus on the accuracy, efficiency, completeness, and user experience of using Bing AI for data extraction compared with traditional methods using two or more reviewers independently. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
35. First Measurement Campaign by a Multi-Sensor Robot for the Lifecycle Monitoring of Transformers.
- Author
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Waikat, Jakub, Jelidi, Amel, Lic, Sandro, Sopidis, Georgios, Kähler, Olaf, Maly, Anna, Pestana, Jesús, Fuhrmann, Ferdinand, and Belavić, Fredi
- Subjects
- *
SUPERVISORY control & data acquisition systems , *ANOMALY detection (Computer security) , *ELECTRIC power distribution grids , *FAILURE analysis , *ROBOTS , *ELECTRIC transformers - Abstract
Transformers are a very important asset in the electrical transmission grid, and they can suffer from destructive events—e.g., rare transformer fires. Unfortunately, destructive events often lead to a lack of data available for investigators during post-event forensics and failure analysis. This fact has motivated our design and implementation of a robotic multi-sensor platform and cloud backend solution for the lifecycle monitoring, inspection, diagnostics, and condition assessment of transformers. The robotic platform collects data from specific viewpoints around the transformer during operation and at specific relevant lifecycle milestones of the transformer (e.g., at the factory acceptance test) in an automated, repetitive, precise, and reliable manner. The acquired data are stored in the cloud backend, which also provides computing resources and data access to relevant in- and off-premises services (e.g., respectively, SCADA systems, and weather reports). In this paper, we present the results of our first measurement campaign to showcase the value of our solution for transformer lifecycle monitoring, for anomaly detection, and as a crucial tool for post-event forensics in the case of destructive events. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
36. The Rise of Particulars: AI and the Ethics of Care.
- Author
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Weinberger, David
- Subjects
- *
CARE ethics (Philosophy) , *FEMINIST ethics , *ARTIFICIAL intelligence , *MORAL reasoning , *ETHICS , *MACHINE learning - Abstract
Machine learning (ML) trains itself by discovering patterns of correlations that can be applied to new inputs. That is a very powerful form of generalization, but it is also very different from the sort of generalization that the west has valorized as the highest form of truth, such as universal laws in some of the sciences, or ethical principles and frameworks in moral reasoning. Machine learning's generalizations synthesize the general and the particular in a new way, creating a multidimensional model that often retains more of the complex differentiating patterns it has uncovered in the training process than the human mind can grasp. Particulars speak louder in these models than they do in traditional generalizing frameworks. This creates an odd analogy with recent movements in moral philosophy, particularly the feminist ethics of care which rejects the application of general moral frameworks in favor of caring responses to the particular needs and interests of those affected by a moral decision. This paper suggests that our current wide-spread and justified worries about ML's inexplicability—primarily arising from its reliance on staggeringly complex patterns of particulars—may be preparing our culture more broadly for a valorizing of particulars as at least as determinative as generalizations, and that this might help further advance the importance of particulars in ideas such as those put forward by the ethics of care. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
37. AI Model for Industry Classification Based on Website Data.
- Author
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Jagrič, Timotej and Herman, Aljaž
- Subjects
- *
LANGUAGE models , *INDUSTRY classification , *ARTIFICIAL intelligence - Abstract
This paper presents a broad study on the application of the BERT (Bidirectional Encoder Representations from Transformers) model for multiclass text classification, specifically focusing on categorizing business descriptions into 1 of 13 distinct industry categories. The study involved a detailed fine-tuning phase resulting in a consistent decrease in training loss, indicative of the model's learning efficacy. Subsequent validation on a separate dataset revealed the model's robust performance, with classification accuracies ranging from 83.5% to 92.6% across different industry classes. Our model showed a high overall accuracy of 88.23%, coupled with a robust F1 score of 0.88. These results highlight the model's ability to capture and utilize the nuanced features of text data pertinent to various industries. The model has the capability to harness real-time web data, thereby enabling the utilization of the latest and most up-to-date information affecting to the company's product portfolio. Based on the model's performance and its characteristics, we believe that the process of relative valuation can be drastically improved. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
38. AI-based inspection of the axes of machine tools.
- Author
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Demetgul, Mustafa, Wang, Wei, Fleischer, Jürgen, and Tansel, Ibrahim Nur
- Abstract
Artificial intelligence (AI) encompasses versatile computational tools easily adaptable to various applications. This study delves into diagnosing linear stages, crucial components in machinery such as machine tools and additive manufacturing equipment, essential for precise linear motion. Adding sensors to these stages for precision monitoring proves costly and inconvenient in industrial applications. For sensorless diagnostics of linear stages, this paper introduces an innovative automated machine learning (AutoML) approach. AutoML employs diverse methods to interpret electric motor current signals, estimating the extent of misalignment issues. Support vector machine (SVM), gradient boosting (GB), and auto-multilayer perceptron (AutoMLP) methods classify the data. To boost performance, ensemble learning (EL) combines estimations from each method for a final decision. Motor signals, saved in the user interface's database, drive the table horizontally and vertically. AutoML learns proper classification through the user interface, using data and user interpretations for training and subsequent classifications. Hyperparameter optimization improves classification performance, with experimental studies demonstrating the superior fault detection capability of the ensemble method in motor current signal analysis. The findings suggest that monitoring motor current signals and leveraging AI tools for evaluation of the performance of manufacturing operation and machine diagnostics will be essential in the near future. Machine tool and additive manufacturing system manufacturers should include AI tools to their controllers. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
39. An Improved GPS/INS Integration Based on EKF and AI During GPS Outages.
- Author
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Ebrahimi, A., Nezhadshahbodaghi, M., Mosavi, M. R., and Ayatollahi, A.
- Subjects
- *
ARTIFICIAL intelligence , *INERTIAL navigation systems , *RADIAL basis functions , *MULTILAYER perceptrons , *ARTIFICIAL satellites in navigation , *KALMAN filtering , *ELECTROMECHANICAL devices - Abstract
Inertial navigation system (INS) is often integrated with satellite navigation systems to achieve the required precision at high-speed applications. In global navigation system (GPS)/INS integration systems, GPS outages are unavoidable and a severe challenge. Moreover, because of the usage of low-cost microelectromechanical sensors (MEMS) with noisy outputs, the INS will get diverged during GPS outages, and that is why navigation precision severely decreases in commercial applications. In this paper, we improve GPS/INS integration system during GPS outages using extended Kalman filter (EKF) and artificial intelligence (AI) together. In this integration algorithm, the AI receives the angular rates and specific forces from the inertial measurement unit (IMU) and velocity from the INS at t and t − 1. Therefore, the AI has positioning and timing data of the INS. While the GPS signals are available, the output of the AI is compared with the GPS increment; so that the AI is trained. During GPS outages, the AI will practically play the GPS role. Thus, it can prevent the divergence of the GPS/INS integration system in GPS-denied environments. Furthermore, we utilize neural networks (NNs) as an AI module in five different types: multi-layer perceptron (MLP) NN, radial basis function (RBF) NN, wavelet NN, support vector regression (SVR) and adaptive neuro-fuzzy inference system (ANFIS). To evaluate the proposed approach, we utilize a real dataset that has been gathered by a mini-airplane. The results demonstrate that the proposed approach outperforms the INS and GPS/INS integration systems with the EKF during GPS outages. Meanwhile, the ANFIS also reached more than 47.77% precision compared to the traditional method. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
40. A framework for quantifying individual and collective common sense.
- Author
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Whiting, Mark E. and Watts, Duncan J.
- Subjects
- *
COMMON sense , *BIPARTITE graphs , *ARTIFICIAL intelligence , *POLITICAL debates , *SOCIAL influence - Abstract
The notion of common sense is invoked so frequently in contexts as diverse as everyday conversation, political debates, and evaluations of artificial intelligence that its meaning might be surmised to be unproblematic. Surprisingly, however, neither the intrinsic properties of common sense knowledge (what makes a claim commonsensical) nor the degree to which it is shared by people (its "commonness") have been characterized empirically. In this paper, we introduce an analytical framework for quantifying both these elements of common sense. First, we define the commonsensicality of individual claims and people in terms of the latter's propensity to agree on the former and their awareness of one another's agreement. Second, we formalize the commonness of common sense as a clique detection problem on a bipartite belief graph of people and claims, defining pq common sense as the fraction q of claims shared by a fraction p of people. Evaluating our framework on a dataset of 2,046 raters evaluating 4,407 diverse claims, we find that commonsensicality aligns most closely with plainly worded, fact-like statements about everyday physical reality. Psychometric attributes such as social perceptiveness influence individual common sense, but surprisingly demographic factors such as age or gender do not. Finally, we find that collective common sense is rare: At most, a small fraction p of people agree on more than a small fraction q of claims. Together, these results undercut universalistic beliefs about common sense and raise questions about its variability that are relevant both to human and artificial intelligence. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
41. Korean Cattle 3D Reconstruction from Multi-View 3D-Camera System in Real Environment.
- Author
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Dang, Chang Gwon, Lee, Seung Soo, Alam, Mahboob, Lee, Sang Min, Park, Mi Na, Seong, Ha-Seung, Han, Seungkyu, Nguyen, Hoang-Phong, Baek, Min Ki, Lee, Jae Gu, and Pham, Van Thuan
- Subjects
- *
POSE estimation (Computer vision) , *BODY weight , *POINT cloud , *CAMERAS , *COWS - Abstract
The rapid evolution of 3D technology in recent years has brought about significant change in the field of agriculture, including precision livestock management. From 3D geometry information, the weight and characteristics of body parts of Korean cattle can be analyzed to improve cow growth. In this paper, a system of cameras is built to synchronously capture 3D data and then reconstruct a 3D mesh representation. In general, to reconstruct non-rigid objects, a system of cameras is synchronized and calibrated, and then the data of each camera are transformed to global coordinates. However, when reconstructing cattle in a real environment, difficulties including fences and the vibration of cameras can lead to the failure of the process of reconstruction. A new scheme is proposed that automatically removes environmental fences and noise. An optimization method is proposed that interweaves camera pose updates, and the distances between the camera pose and the initial camera position are added as part of the objective function. The difference between the camera's point clouds to the mesh output is reduced from 7.5 mm to 5.5 mm. The experimental results showed that our scheme can automatically generate a high-quality mesh in a real environment. This scheme provides data that can be used for other research on Korean cattle. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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42. Skilled for the Future: Information Literacy for AI Use by University Students in Africa and the Role of Librarians.
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Akakpo, Martin Gameli
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COLLEGE students , *OCCUPATIONAL roles , *PSYCHOLOGY of librarians , *DIGITAL technology , *USER interfaces , *ACADEMIC libraries , *ARTIFICIAL intelligence , *INFORMATION literacy , *HEALTH literacy , *UNIVERSITIES & colleges , *INFORMATION resources , *LIBRARIANS , *WRITTEN communication - Abstract
The role of libraries in preparing students to thrive during their studies and innovate after university is growing in importance. Information is more easily accessible through digital channels and is increasingly abundant. Generative Artificial intelligence (AI) adds to this reality and increases the need for digitally driven information literacy skills. This paper aims to guide librarians by discussing the digitalization of information creation, retrieval, and use. It recommends the training of both digital and information literacy for students. Librarians are called upon to provide clear guidelines to their universities to steer the use of generative AI. The implications of digital information sources and generative AI are discussed with the role of librarians in context. Information literacy and digital literacy are related. Academic libraries should include digital topics in information literacy training. Information literacy should be trained at the start of university education and before students begin dissertation writing. University libraries should propose guidelines for the use of generative artificial intelligence tools by students. [ABSTRACT FROM AUTHOR]
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- 2024
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43. A decolonial critical theory of artificial intelligence: intersectional egalitarianism, moral alignment, and AI governance.
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de Oliveira, Nythamar H.
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CRITICAL theory , *DEMOCRACY , *TECHNOLOGY , *INCLUSIVE education , *NATURALISM - Abstract
In this paper, I argue for a normative reconstruction, from a decolonial perspective of critical theory in Brazil and Latin America, of a democratic ethos that despite its weaknesses and normative deficits is capable of fostering an increasingly deliberative, participatory, and egalitarian democracy by making extensive use of new digital technologies (comprising both AI systems and digital governance). Its argumentative core boils down to the promotion of intersectional egalitarianism (socio-economic, gender, racial-ethnic, environmental) through digital inclusion, which seems only feasible to us from a perspective capable of accommodating the normative claims of a critical decolonial theory combined with a naturalistic view of sustainability, within a research program that I dubbed “mitigated social constructionism” in response to the phenomenological deficit of normative and naturalistic theories (including critical theory and neurophilosophy). If what matters is normativity, then to avoid the divide between naturalism and non-naturalist normativity one nonfoundationalist alternative is to resort to hermeneutical and procedural accounts of normativity as helpful clues to making sense of the naturalism-normativity problem, avoiding reductionist interpretations of both naturalism (Churchland) and normativism (Parfit). [ABSTRACT FROM AUTHOR]
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- 2024
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44. FUNDAMENTOS HISTÓRICOS DE LA BIOMETRÍA APLICADA A LA DEFENSA Y SUS PLANTEAMIENTOS ÉTICOS.
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Illanas García, Luis and Madueño Álvarez, Miguel
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With the implementation of new and more sophisticated advances in Artificial Intelligence (AI) aimed at improving weapons control systems, new applications and the need for a range of control measures are emerging. Biometric data has evolved in parallel to AI systems, progressing from fingerprints to retina scans and DNA analysis. In this paper we will analyse the importance of these control elements and their implementation in the defensive measures of states, as well as question the ethics of their execution. [ABSTRACT FROM AUTHOR]
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- 2024
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45. Mujeres artificiales en el cine de ciencia ficción.
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Molina García, Berta, Franco, Yanna G., and Tajahuerce Ángel, Isabel
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Introduction: This paper aims to study the gendered representations of robots, cyborgs, ginoids, clones, holograms, and female artificial intelligences in science fiction film. It is hypothesized that the sexist stereotypes widely studied in female film characters are perpetuated in female artificial creations in science fiction film. Methodology: A sample of 83 characters was taken from the IMdB database. After their classification, we proceeded to carry out a qualitative analysis on representation, gender roles and stereotypes of the characters. Results: The results obtained confirm that the science fiction genre is intensely masculinized and vertical occupational segregation is the dominant note. In addition, gender roles and stereotypes that are common in other film genres are also replicated in science fiction. Discussion: The representations do not manage to get rid of sexist precepts that are maintained over time as a result of the persistence of a male gaze. Conclusions: This study confirms the need to establish tools that allow women to access a highly masculinized cultural industry as well as the need to carry out a representation of female fictional characters far from the gender stereotypes traditionally associated with women. [ABSTRACT FROM AUTHOR]
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- 2024
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46. Levi's and Lalaland.ai collaboration crisis.
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Maiolo, Lila
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ARTIFICIAL intelligence , *CRISES , *CRISIS management - Abstract
Levi Strauss & Co., a popular fashion label commonly known as Levi's, was involved in a crisis situation in March 2023 as a result of their partnership with Lalaland.ai, an artificial intelligence (AI) company. The partnership was created with the intention of using AI-generated models to show more diversity in Levi's modelling. However, the brand received intense backlash and criticism following the partnership's announcement for cheapening diversity by failing to use real models. In the format of a case study, this paper describes the situation and evaluates Levi's crisis response in this relevant and dynamic dilemma. [ABSTRACT FROM AUTHOR]
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- 2024
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47. Challenges and strategies for wide-scale artificial intelligence (AI) deployment in healthcare practices: A perspective for healthcare organizations.
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Esmaeilzadeh, Pouyan
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Healthcare organizations have realized that Artificial intelligence (AI) can provide a competitive edge through personalized patient experiences, improved patient outcomes, early diagnosis, augmented clinician capabilities, enhanced operational efficiencies, or improved medical service accessibility. However, deploying AI-driven tools in the healthcare ecosystem could be challenging. This paper categorizes AI applications in healthcare and comprehensively examines the challenges associated with deploying AI in medical practices at scale. As AI continues to make strides in healthcare, its integration presents various challenges, including production timelines, trust generation, privacy concerns, algorithmic biases, and data scarcity. The paper highlights that flawed business models and wrong workflows in healthcare practices cannot be rectified merely by deploying AI-driven tools. Healthcare organizations should re-evaluate root problems such as misaligned financial incentives (e.g., fee-for-service models), dysfunctional medical workflows (e.g., high rates of patient readmissions), poor care coordination between different providers, fragmented electronic health records systems, and inadequate patient education and engagement models in tandem with AI adoption. This study also explores the need for a cultural shift in viewing AI not as a threat but as an enabler that can enhance healthcare delivery and create new employment opportunities while emphasizing the importance of addressing underlying operational issues. The necessity of investments beyond finance is discussed, emphasizing the importance of human capital, continuous learning, and a supportive environment for AI integration. The paper also highlights the crucial role of clear regulations in building trust, ensuring safety, and guiding the ethical use of AI, calling for coherent frameworks addressing transparency, model accuracy, data quality control, liability, and ethics. Furthermore, this paper underscores the importance of advancing AI literacy within academia to prepare future healthcare professionals for an AI-driven landscape. Through careful navigation and proactive measures addressing these challenges, the healthcare community can harness AI's transformative power responsibly and effectively, revolutionizing healthcare delivery and patient care. The paper concludes with a vision and strategic suggestions for the future of healthcare with AI, emphasizing thoughtful, responsible, and innovative engagement as the pathway to realizing its full potential to unlock immense benefits for healthcare organizations, physicians, nurses, and patients while proactively mitigating risks. • This study categorizes AI applications in healthcare and analyzes their deployment challenges at scale in medical practices. • The paper emphasizes a cultural shift to view AI as a healthcare delivery enhancer and job creator, not a threat. • To integrate AI, investments in finance and human capital, continuous learning, and a supportive environment are needed. • Clear regulatory frameworks should be developed to build trust, ensure safety, and guide the ethical use of AI in healthcare. • The study provides strategic suggestions for responsible AI use in healthcare to maximize benefits and minimize risks. [ABSTRACT FROM AUTHOR]
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- 2024
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48. Can an AI-carebot be filial? Reflections from Confucian ethics.
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This article discusses the application of artificially intelligent robots within eldercare and explores a series of ethical considerations, including the challenges that AI (Artificial Intelligence) technology poses to traditional Chinese Confucian filial piety. From the perspective of Confucian ethics, the paper argues that robots cannot adequately fulfill duties of care. Due to their detachment from personal relationships and interactions, the “emotions” of AI robots are merely performative reactions in different situations, rather than actual emotional abilities. No matter how “humanized” robots become, it is difficult to establish genuine empathy and a meaningful relationship with them for this reason. Even so, we acknowledge that AI robots are a significant tool in managing the demands of elder care and the growth of care poverty, and as such, we attempt to outline some parameters within which care robotics could be acceptable within a Confucian ethical system. Finally, the paper discusses the social impact and ethical considerations brought on by the interaction between humans and machines. It is observed that the relationship between humans and technology has always had both utopian and dystopian aspects, and robotic elder care is no exception. AI caregiver robots will likely become a part of elder care, and the transformation of these robots from “service providers” to “companions” seems inevitable. In light of this, the application of AI-augmented robotic elder care will also eventually change our understanding of interpersonal relationships and traditional requirements of filial piety. [ABSTRACT FROM AUTHOR]
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- 2024
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49. A joint physics and radiobiology DREAM team vision – Towards better response prediction models to advance radiotherapy.
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Vens, C., van Luijk, P., Vogelius, R.I., El Naqa, I., Humbert-Vidan, L., von Neubeck, C., Gomez-Roman, N., Bahn, E., Brualla, L., Böhlen, T.T., Ecker, S., Koch, R., Handeland, A., Pereira, S., Possenti, L., Rancati, T., Todor, D., Vanderstraeten, B., Van Heerden, M., and Ullrich, W.
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PREDICTION models , *RADIOBIOLOGY , *BIOLOGICAL monitoring , *PHYSICS , *DATA science , *RADIOTHERAPY - Abstract
• Optimal RT outcomes requires accurate robust predictive radiation oncology models. • Present challenges in model and data quality must be addressed to improve RO models. • Mechanistic understanding of radiobiological concepts can inform RO models. • Integrating novel computational and modeling methods will advance model development. • Interdisciplinary RO model development leverages the expertise of all stakeholders. Radiotherapy developed empirically through experience balancing tumour control and normal tissue toxicities. Early simple mathematical models formalized this practical knowledge and enabled effective cancer treatment to date. Remarkable advances in technology, computing, and experimental biology now create opportunities to incorporate this knowledge into enhanced computational models. The ESTRO DREAM (Dose Response, Experiment, Analysis, Modelling) workshop brought together experts across disciplines to pursue the vision of personalized radiotherapy for optimal outcomes through advanced modelling. The ultimate vision is leveraging quantitative models dynamically during therapy to ultimately achieve truly adaptive and biologically guided radiotherapy at the population as well as individual patient-based levels. This requires the generation of models that inform response-based adaptations, individually optimized delivery and enable biological monitoring to provide decision support to clinicians. The goal is expanding to models that can drive the realization of personalized therapy for optimal outcomes. This position paper provides their propositions that describe how innovations in biology, physics, mathematics, and data science including AI could inform models and improve predictions. It consolidates the DREAM team's consensus on scientific priorities and organizational requirements. Scientifically, it stresses the need for rigorous, multifaceted model development, comprehensive validation and clinical applicability and significance. Organizationally, it reinforces the prerequisites of interdisciplinary research and collaboration between physicians, medical physicists, radiobiologists, and computational scientists throughout model development. Solely by a shared understanding of clinical needs, biological mechanisms, and computational methods, more informed models can be created. Future research environment and support must facilitate this integrative method of operation across multiple disciplines. [ABSTRACT FROM AUTHOR]
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- 2024
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50. Hybrid Classifier for Optimizing Mental Health Prediction: Feature Engineering and Fusion Technique.
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Yadav, Gaurav and Bokhari, Mohammad Ubaidullah
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MENTAL health , *K-nearest neighbor classification , *FEATURE selection , *RANDOM forest algorithms , *DECISION trees - Abstract
Abstract : A major worldwide health concern is mental health issues, which highlights the importance of early identification and intervention. In this paper, the effectiveness of two new hybrid classifiers is examined and compared to traditional machine learning techniques. Our study presents a novel hybrid classifier framework that combines Decision Trees with k-Nearest Neighbors (Hybrid_1) and Random Forest with Neural Networks (Hybrid_2). We do a detailed study with an emphasis on customized feature engineering techniques for mental health evaluation utilizing this novel fusion technique. The results of the experiments conducted on the Mental_health.csv dataset show how well the hybrid classifiers work; accuracy rates of 86.69% and 93.54%, respectively, for (DT + kNN) and (RF + NN) is attained. The aforementioned results highlight the potential of hybrid classifiers to improve mental health prediction and highlight the importance of feature engineering in optimizing predictive models. By combining Decision Trees with k-Nearest Neighbors and Random Forests with Neural Networks, respectively, our hybrid classifiers, Hybrid_1 and Hybrid_2, surpass current techniques and mark a breakthrough in the prediction of mental health. Our hybrids take advantage of the complimentary capabilities of various algorithms, in contrast to traditional techniques that could have trouble with complex feature connections or be less flexible when working with different datasets. In addition to showcasing the potential of hybrid classifiers in mental health assessment, our results offer insightful information on feature selection and model explainability, furthering our understanding of this important area. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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