68,435 results
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2. Assessment of Published Papers on the Use of Machine Learning in Diagnosis and Treatment of Mastitis.
- Author
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Bourganou, Maria V., Kiouvrekis, Yiannis, Chatzopoulos, Dimitrios C., Zikas, Sotiris, Katsafadou, Angeliki I., Liagka, Dimitra V., Vasileiou, Natalia G. C., Fthenakis, George C., and Lianou, Daphne T.
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MACHINE learning ,ARTIFICIAL intelligence ,SUPPORT vector machines ,COMPUTERS in agriculture ,MASTITIS - Abstract
The present study is an evaluation of published papers on machine learning as employed in mastitis research. The aim of this study was the quantitative evaluation of the scientific content and the bibliometric details of these papers. In total, 69 papers were found to combine machine learning in mastitis research and were considered in detail. There was a progressive yearly increase in published papers, which originated from 23 countries (mostly from China or the United States of America). Most original articles (n = 59) referred to work involving cattle, relevant to mastitis in individual animals. Most articles described work related to the development and diagnosis of the infection. Fewer articles described work on the antibiotic resistance of pathogens isolated from cases of mastitis and on the treatment of the infection. In most studies (98.5% of published papers), supervised machine learning models were employed. Most frequently, decision trees and support vector machines were employed in the studies described. 'Machine learning' and 'mastitis' were the most frequently used keywords. The papers were published in 39 journals, with most frequent publications in Computers and Electronics in Agriculture and Journal of Dairy Science. The median number of cited references in the papers was 39 (interquartile range: 31). There were 435 co-authors in the papers (mean: 6.2 per paper, median: 5, min.–max.: 1–93) and 356 individual authors. The median number of citations received by the papers was 4 (min.–max.: 0–70). Most papers (72.5%) were published in open-access mode. This study summarized the characteristics of papers on mastitis and artificial intelligence. Future studies could explore using these methodologies at farm level, and extending them to other animal species, while unsupervised learning techniques might also prove to be useful. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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3. A firm's creation of proprietary knowledge linked to the knowledge spilled over from its research publications: the case of artificial intelligence.
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Jee, Su Jung and Sohn, So Young
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ARTIFICIAL intelligence ,PAPER industry ,BUSINESS enterprises - Abstract
This study investigates the mechanism by which knowledge spilled over from a firm's research publication consequently spills into the focal firm as a form of proprietary knowledge when it is engaged in an emerging science-related technology. We define the knowledge spillover pool (KSP) as an evolving group of papers citing a paper published by a firm. Focusing on the recent development of artificial intelligence, on which firms have published actively, we compare the KSP conditions related to the increase in patents created by the focal firm with those created by external actors. Using a Cox regression and subsequent contrast test, we find that both an increasing KSP and an increasing similarity between the idea published by the focal firm and KSP are positively related to the proprietary knowledge creation of both the focal firm and external actors, with such relations being significantly stronger for the focal firm than for external actors. On the contrary, an increasing proportion of industry papers in the KSP are positively associated with the proprietary knowledge creation not only by the focal firm but also by external actors to a similar degree. We contribute to the literature on selective revealing and to the firms' publishing strategies. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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4. Making paper labels smart for augmented wine recognition.
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Angeli, Alessia, Stacchio, Lorenzo, Donatiello, Lorenzo, Giacchè, Alessandro, and Marfia, Gustavo
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OBJECT recognition (Computer vision) ,ELECTRONIC paper ,OPTICAL character recognition ,INFORMATION storage & retrieval systems ,WINES - Abstract
An invisible layer of knowledge is progressively growing with the emergence of situated visualizations and reality-based information retrieval systems. In essence, digital content will overlap with real-world entities, eventually providing insights into the surrounding environment and useful information for the user. The implementation of such a vision may appear close, but many subtle details separate us from its fulfillment. This kind of implementation, as the overlap between rendered virtual annotations and the camera's real-world view, requires different computer vision paradigms for object recognition and tracking which often require high computing power and large-scale datasets of images. Nevertheless, these resources are not always available, and in some specific domains, the lack of an appropriate reference dataset could be disruptive for a considered task. In this particular scenario, we here consider the problem of wine recognition to support an augmented reading of their labels. In fact, images of wine bottle labels may not be available as wineries periodically change their designs, product information regulations may vary, and specific bottles may be rare, making the label recognition process hard or even impossible. In this work, we present augmented wine recognition, an augmented reality system that exploits optical character recognition paradigms to interpret and exploit the text within a wine label, without requiring any reference image. Our experiments show that such a framework can overcome the limitations posed by image retrieval-based systems while exhibiting a comparable performance. [ABSTRACT FROM AUTHOR]
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- 2024
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5. Competitive Advantage Through Artificial Intelligence: Toward a Theory of Situated AI.
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Kemp, Ayenda
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ARTIFICIAL intelligence ,COMPETITIVE advantage in business ,BUSINESS enterprises - Abstract
How can firms establish competitive advantages using artificial intelligence (AI)? Although AI is beginning to permeate business activities, our understanding of how AI can be used to create unique value is limited. To address this void, I introduce the concept of situated AI and illuminate its importance for establishing AI-driven competitive advantages. The paper highlights the organizational activities involved in situating AI—specifically, grounding, bounding, and recasting. It also explains the conditions in which these situating activities better enable firms to develop AI-driven capabilities that are firm-specific, cost-effective, and appropriate for opportunities in the strategic environment. Thus, this paper provides an integrative framework for connecting a firm's AI pursuits to competitive advantage. [ABSTRACT FROM AUTHOR]
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- 2024
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6. Exploring the potential of artificial intelligence to enhance the writing of english academic papers by non-native english-speaking medical students - the educational application of ChatGPT.
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Li, Jiakun, Zong, Hui, Wu, Erman, Wu, Rongrong, Peng, Zhufeng, Zhao, Jing, Yang, Lu, Xie, Hong, and Shen, Bairong
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NATIVE language ,CHATGPT ,ARTIFICIAL intelligence ,LANGUAGE models ,MEDICAL students ,ACADEMIC discourse - Abstract
Background: Academic paper writing holds significant importance in the education of medical students, and poses a clear challenge for those whose first language is not English. This study aims to investigate the effectiveness of employing large language models, particularly ChatGPT, in improving the English academic writing skills of these students. Methods: A cohort of 25 third-year medical students from China was recruited. The study consisted of two stages. Firstly, the students were asked to write a mini paper. Secondly, the students were asked to revise the mini paper using ChatGPT within two weeks. The evaluation of the mini papers focused on three key dimensions, including structure, logic, and language. The evaluation method incorporated both manual scoring and AI scoring utilizing the ChatGPT-3.5 and ChatGPT-4 models. Additionally, we employed a questionnaire to gather feedback on students' experience in using ChatGPT. Results: After implementing ChatGPT for writing assistance, there was a notable increase in manual scoring by 4.23 points. Similarly, AI scoring based on the ChatGPT-3.5 model showed an increase of 4.82 points, while the ChatGPT-4 model showed an increase of 3.84 points. These results highlight the potential of large language models in supporting academic writing. Statistical analysis revealed no significant difference between manual scoring and ChatGPT-4 scoring, indicating the potential of ChatGPT-4 to assist teachers in the grading process. Feedback from the questionnaire indicated a generally positive response from students, with 92% acknowledging an improvement in the quality of their writing, 84% noting advancements in their language skills, and 76% recognizing the contribution of ChatGPT in supporting academic research. Conclusion: The study highlighted the efficacy of large language models like ChatGPT in augmenting the English academic writing proficiency of non-native speakers in medical education. Furthermore, it illustrated the potential of these models to make a contribution to the educational evaluation process, particularly in environments where English is not the primary language. [ABSTRACT FROM AUTHOR]
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- 2024
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7. Automatic Literature Mapping Selection: Classification of Papers on Industry Productivity.
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Bispo, Guilherme Dantas, Vergara, Guilherme Fay, Saiki, Gabriela Mayumi, Martins, Patrícia Helena dos Santos, Coelho, Jaqueline Gutierri, Rodrigues, Gabriel Arquelau Pimenta, Oliveira, Matheus Noschang de, Mosquéra, Letícia Rezende, Gonçalves, Vinícius Pereira, Neumann, Clovis, and Serrano, André Luiz Marques
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INDUSTRY classification ,PAPER industry ,ARTIFICIAL intelligence ,DATABASES ,CLASSIFICATION algorithms ,ELECTRONIC publications - Abstract
The academic community has witnessed a notable increase in paper publications, whereby the rapid pace at which modern society seeks information underscores the critical need for literature mapping. This study introduces an innovative automatic model for categorizing articles by subject matter using Machine Learning (ML) algorithms for classification and category labeling, alongside a proposed ranking method called SSS (Scientific Significance Score) and using Z-score to select the finest papers. This paper's use case concerns industry productivity. The key findings include the following: (1) The Decision Tree model demonstrated superior performance with an accuracy rate of 75% in classifying articles within the productivity and industry theme. (2) Through a ranking methodology based on citation count and publication date, it identified the finest papers. (3) Recent publications with higher citation counts achieved better scores. (4) The model's sensitivity to outliers underscores the importance of addressing database imbalances, necessitating caution during training by excluding biased categories. These findings not only advance the utilization of ML models for paper classification but also lay a foundation for further research into productivity within the industry, exploring themes such as artificial intelligence, efficiency, industry 4.0, innovation, and sustainability. [ABSTRACT FROM AUTHOR]
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- 2024
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8. Amend: an integrated platform of retracted papers and concerned papers.
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Li, Menghui, Chen, Fuyou, Tong, Sichao, Yang, Liying, and Shen, Zhesi
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RESEARCH integrity ,OPEN access publishing ,SOCIAL media ,ARTIFICIAL intelligence ,DATABASES ,INFORMATION resources ,ELECTRONIC journals - Abstract
The notable increase in retraction papers has attracted considerable attention from diverse stakeholders. Various sources are now offering information related to research integrity, including concerns voiced on social media, disclosed lists of paper mills, and retraction notices accessible through journal websites. However, despite the availability of such resources, there remains a lack of a unified platform to consolidate this information, thereby hindering efficient searching and cross-referencing. Thus, it is imperative to develop a comprehensive platform for retracted papers and related concerns. This article aims to introduce "Amend," a platform designed to integrate information on research integrity from diverse sources. The Amend platform consolidates concerns and lists of problematic articles sourced from social media platforms (e.g., PubPeer, For Better Science), retraction notices from journal websites, and citation databases (e.g., Web of Science, CrossRef). Moreover, Amend includes investigation and punishment announcements released by administrative agencies (e.g., NSFC, MOE, MOST, CAS). Each related paper is marked and can be traced back to its information source via a provided link. Furthermore, the Amend database incorporates various attributes of retracted articles, including citation topics, funding details, open access status, and more. The reasons for retraction are identified and classified as either academic misconduct or honest errors, with detailed subcategories provided for further clarity. Within the Amend platform, a total of 32,515 retracted papers indexed in SCI, SSCI, and ESCI between 1980 and 2023 were identified. Of these, 26,620 (81.87%) were associated with academic misconduct. The retraction rate stands at 6.64 per 10,000 articles. Notably, the retraction rate for non-gold open access articles significantly differs from that for gold open access articles, with this disparity progressively widening over the years. Furthermore, the reasons for retractions have shifted from traditional individual behaviors like falsification, fabrication, plagiarism, and duplication to more organized large-scale fraudulent practices, including Paper Mills, Fake Peer-review, and Artificial Intelligence Generated Content (AIGC). The Amend platform may not fully capture all retracted and concerning papers, thereby impacting its comprehensiveness. Additionally, inaccuracies in retraction notices may lead to errors in tagged reasons. Amend provides an integrated platform for stakeholders to enhance monitoring, analysis, and research on academic misconduct issues. Ultimately, the Amend database can contribute to upholding scientific integrity. This study introduces a globally integrated platform for retracted and concerning papers, along with a preliminary analysis of the evolutionary trends in retracted papers. [ABSTRACT FROM AUTHOR]
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- 2024
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9. Improved PageRank and New Indices for Academic Impact Evaluation Using AI Papers as Case Studies.
- Author
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Wang, Rui, Li, Shijie, Yin, Qing, Zhang, Ji, Yao, Rujing, and Wu, Ou
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ARTIFICIAL intelligence ,ACADEMIC degrees ,CITATION indexes ,CITATION networks - Abstract
Evaluating academic papers and groups is important in scholar evaluation and literature retrieval. However, current evaluation indices, which pay excessive attention to the citation number rather than the citation importance and unidirectionality, are relatively simple. This study proposes new evaluation indices for papers and groups. First, an improved PageRank (PR) algorithm introducing citation importance is proposed to obtain a new citation-based paper index (CPI) via a pre-ranking and fine-tuning strategy. Second, to evaluate the paper's influence inside and outside its research field, the focus citation-based paper index (FCPI) and diversity citation-based paper index (DCPI) are proposed based on topic similarity and diversity, respectively. Third, aside from the statistical indices for academic papers, we propose a foreign academic degree of dependence (FAD) to characterise the dependence between two academic groups. Finally, artificial intelligence (AI) papers from 2005 to 2019 are utilised for a case study. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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10. Manager Appraisal of Artificial Intelligence Investments.
- Author
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Queiroz, Magno, Anand, Abhijith, and Baird, Aaron
- Abstract
Artificial intelligence (AI) is an important source of competitive advantage as it enables task augmentation and automation. However, while AI can create significant value, it is important to note that AI investments are fraught with risks and uncertainties. Thus, managers are likely to carefully evaluate potential AI investments before committing to investing. However, we know little about how managers' appraisal of AI influences their investment choices. Drawing upon theorization in the areas of business value of AI, agentic information systems (IS) appraisal, and time-situated agency, we extend existing theory in two ways: (1) development of an AI classification (foundational typology) that proposes two dimensions (action autonomy and learning autonomy) for classifying AI by type and level of autonomy; and (2) development of propositions that leverage time-situated agency and the AI classification to explicate how managers' delegation preferences influence their AI investment appraisal. This paper contributes a foundational theoretical platform for furthering AI investment appraisal research. In addition, the paper sets an agenda for future research in this area. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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11. Blockchain Technology and its Use Along the Scientific Research Workflow: A IUPAC White Paper Coming Soon.
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Lawlor, Bonnie, Chalk, Stuart, Frey, Jeremy, Hayashi, Kazuhiro, Kochalko, David, Shute, Richard, and Sopek, Mirek
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BLOCKCHAINS ,GOVERNMENT report writing ,ARTIFICIAL intelligence ,WORKFLOW ,VIRTUAL reality - Abstract
At the Council meeting held during the 2019 World Chemistry Congress in Paris, a representative from one of IUPAC's National Adhering Organizations raised the question "What is Blockchain Technology?" They went on to say that both "Blockchain" and "Artificial Intelligence" were prominent buzzwords and asked if IUPAC could provide information on how these technologies were impacting science in general and chemistry in particular. Coincidentally, at that same Congress, the technology had been the subject of a presentation by Richard Shute [1], one of the authors of this paper, and the technology had already captured the interest of Bonnie Lawlor, another of the authors of this paper, to the extent that she published an article in Chemistry International (CI) on the topic the following year [2]. As a result of the question raised at the Council meeting, Javier García-Martínez, IUPAC President 2022-2023, suggested that a white paper on Blockchain be developed (Note: Artificial Intelligence was made the focus of the global, virtual 2021 World Chemistry Leadership Meeting (WCLM) and a brief article on that special event was published in the July 2022 issue of CI [3]). [ABSTRACT FROM AUTHOR]
- Published
- 2024
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12. Research Paper Screening Tool: Automating Conference Paper Evaluation and Enhancement.
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Rathnasiri, Hansani Upeksha, Ishara Lakshani, L. A., Amarasinghe, Nipuni Nilakna, Dissanayake, Oshan Asinda, Nawinna, Dasuni, and Attanayaka, Buddima
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TECHNOLOGICAL innovations ,ARTIFICIAL neural networks ,MACHINE learning ,ARTIFICIAL intelligence ,NATURAL language processing - Abstract
In this era of knowledge, academic researchers are growing every day, this also spikes a growth in published literature on the new innovations and findings. This leads to a problem where the reviewers at the conferences must go through many research papers to determine whether they are suitable for the conference or not. This problem has caused the necessity of an effective paper screening tool for optimizing the literature review process. This research presents a development of a new Paper Screening Tool (PST) aimed at increasing the efficiency and accuracy of the literature screening phase. Leveraging the NPL processing techniques this PST and reduces a lot of manual efforts. Through comprehensive evaluation using a diverse dataset, the tools provide high precision. The PST also has user friendly interfaces and customizable report generation which empowers the researchers screening process to their specific needs. This paper contributes to literature by solving the challenge of information overloading during the literature review. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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13. Rising adoption of artificial intelligence in scientific publishing: evaluating the role, risks, and ethical implications in paper drafting and review process.
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Carobene, Anna, Padoan, Andrea, Cabitza, Federico, Banfi, Giuseppe, and Plebani, Mario
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ARTIFICIAL intelligence ,SCIENCE publishing ,SCIENTIFIC literature ,ETHICAL problems ,RESEARCH personnel - Abstract
In the rapid evolving landscape of artificial intelligence (AI), scientific publishing is experiencing significant transformations. AI tools, while offering unparalleled efficiencies in paper drafting and peer review, also introduce notable ethical concerns. This study delineates AI's dual role in scientific publishing: as a co-creator in the writing and review of scientific papers and as an ethical challenge. We first explore the potential of AI as an enhancer of efficiency, efficacy, and quality in creating scientific papers. A critical assessment follows, evaluating the risks vs. rewards for researchers, especially those early in their careers, emphasizing the need to maintain a balance between AI's capabilities and fostering independent reasoning and creativity. Subsequently, we delve into the ethical dilemmas of AI's involvement, particularly concerning originality, plagiarism, and preserving the genuine essence of scientific discourse. The evolving dynamics further highlight an overlooked aspect: the inadequate recognition of human reviewers in the academic community. With the increasing volume of scientific literature, tangible metrics and incentives for reviewers are proposed as essential to ensure a balanced academic environment. AI's incorporation in scientific publishing is promising yet comes with significant ethical and operational challenges. The role of human reviewers is accentuated, ensuring authenticity in an AI-influenced environment. As the scientific community treads the path of AI integration, a balanced symbiosis between AI's efficiency and human discernment is pivotal. Emphasizing human expertise, while exploit artificial intelligence responsibly, will determine the trajectory of an ethically sound and efficient AI-augmented future in scientific publishing. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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14. From advancements to ethics: Assessing ChatGPT's role in writing research paper.
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Gupta, Vasu, Anamika, FNU, Parikh, Kinna, Patel, Meet A., Jain, Rahul, and Jain, Rohit
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CHATGPT ,ARTIFICIAL intelligence ,BENCHMARKING (Management) - Abstract
Artificial intelligence (AI), with its infinite capabilities, has ushered in an era of transformation in the twentyfirst century. ChatGPT (Generative Pre-trained Transformer), an AI language model, has lately been in the spotlight, and there is an increasing partnership between the research authors and the chatGPT. Using ChatGPT, authors can set new benchmarks in paper writing in terms of speed, accuracy, consistency, and adaptability. ChatGPT has turned out to be an invaluable tool for manuscript writing, editing, and reference management. While it has numerous advantages, it has been criticised due to ethical quandaries, inaccuracies in scientific data and facts, and, most importantly, a lack of critical thinking skills. These disadvantages of using ChatGPT place limitations on its use in medical publications since these articles guide the future management of many diseases. While AI can fix issues, it lacks the ability to think like humans and thus cannot substitute human authors. To better comprehend the future of this technology in research, we discuss the advantages, drawbacks, and ethical dilemmas of using ChatGPT in paper writing by reviewing existing literature on Pubmed and Google Scholar and using ChatGPT itself to understand the prompt response. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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15. Enhancing Cyber-Physical Resiliency of Microgrid Control under Denial-of-Service Attack with Digital Twins.
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Abdelrahman, Mahmoud S., Kharchouf, Ibtissam, Hussein, Hossam M., Esoofally, Mustafa, and Mohammed, Osama A.
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RENEWABLE energy sources ,DIGITAL twins ,DENIAL of service attacks ,ELECTRONIC paper ,ARTIFICIAL intelligence - Abstract
Microgrids (MGs) are the new paradigm of decentralized networks of renewable energy sources, loads, and storage devices that can operate independently or in coordination with the primary grid, incorporating significant flexibility and supply reliability. To increase reliability, traditional individual MGs can be replaced by networked microgrids (NMGs), which are more dependable. However, when it comes to operation and control, they also pose challenges for cyber security and communication reliability. Denial of service (DoS) is a common danger to DC microgrids with advanced controllers that rely on active information exchanges and has been recorded as the most frequent cause of cyber incidents. It can disrupt data transmission, leading to ineffective control and system instability. This paper proposes digital twin (DT) technology as an integrated solution, with new, advanced analytics technology using machine learning and artificial intelligence to provide simulation capabilities to predict and estimate future states. By twinning the cyber-physical dynamics of NMGs using data-driven models, DoS attacks targeting cyber-layer agents will be detected and mitigated. A long short-term memory (LSTM) model data-driven digital twin approach for DoS attack detection and mitigation is implemented, tested, and evaluated. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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16. A deep learning approach to classify country and value of modern coins.
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Cirillo, Stefano, Solimando, Giandomenico, and Virgili, Luca
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DEEP learning ,ARTIFICIAL intelligence ,PAPER money ,COINS ,CONVOLUTIONAL neural networks ,CULTURAL property - Abstract
The use of Artificial Intelligence (AI) to preserve and promote cultural heritage has experienced significant growth in recent years. Among the various areas of cultural heritage, numismatics have emerged as a particularly promising field where we can develop AI solutions. Numismatics refers to the study of coins, tokens, paper money, and medals, which play a critical role in understanding human history and culture. However, there are still limited resources available to help researchers and collectors in the identification of coins. This is due to the vast number of coins in circulation, which presents a significant challenge in developing smart tools for classification tasks. This paper aims to provide a contribution to this setting. In particular, we start by creating a new dataset called EURO-Coin, which consists of images showing the side of coins with reliefs and is designed to facilitate the training and testing of AI models for euro coin classification. Then, we propose two approaches that leverage Convolutional Neural Networks and self-attention layers to classify the country and value of the coins. In our experiments, we obtain an accuracy of 86.9% for country classification and an accuracy of 96.4% for value classification. Finally, we conduct an ablation study to evaluate the impact of the preprocessing activities and attention layers in our approaches. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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17. Artificial Intelligence in the Provision of Health Care: An American College of Physicians Policy Position Paper.
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Daneshvar, Nadia, Pandita, Deepti, Erickson, Shari, Snyder Sulmasy, Lois, and DeCamp, Matthew
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ARTIFICIAL intelligence ,CLINICAL decision support systems ,PHYSICIANS ,MEDICAL care ,PHYSICIAN-patient relations ,DOCUMENTATION - Abstract
Artificial intelligence and machine learning technologies have a variety of applications throughout the provision of health care, such as clinical documentation, diagnostic image processing, and clinical decision support. This position paper describes the American College of Physicians' (ACP) foundational positions and recommendations regarding the use of these technologies in the provision of health care. The foundation of these positions are principles in the ACP Ethics Manual. Internal medicine physicians are increasingly interacting with systems that implement artificial intelligence (AI) and machine learning (ML) technologies. Some physicians and health care systems are even developing their own AI models, both within and outside of electronic health record (EHR) systems. These technologies have various applications throughout the provision of health care, such as clinical documentation, diagnostic image processing, and clinical decision support. With the growing availability of vast amounts of patient data and unprecedented levels of clinician burnout, the proliferation of these technologies is cautiously welcomed by some physicians. Others think it presents challenges to the patient–physician relationship and the professional integrity of physicians. These dispositions are understandable, given the "black box" nature of some AI models, for which specifications and development methods can be closely guarded or proprietary, along with the relative lagging or absence of appropriate regulatory scrutiny and validation. This American College of Physicians (ACP) position paper describes the College's foundational positions and recommendations regarding the use of AI- and ML-enabled tools and systems in the provision of health care. Many of the College's positions and recommendations, such as those related to patient-centeredness, privacy, and transparency, are founded on principles in the ACP Ethics Manual. They are also derived from considerations for the clinical safety and effectiveness of the tools as well as their potential consequences regarding health disparities. The College calls for more research on the clinical and ethical implications of these technologies and their effects on patient health and well-being. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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18. A guide to understanding big data for the nurse scientist: A discursive paper.
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Duah, Henry Ofori, Boch, Samantha, Arter, Sara, Nidey, Nichole, and Lambert, Joshua
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MEDICAL protocols ,DATA security ,DATABASE management ,ARTIFICIAL intelligence ,POPULATION health ,HEALTH ,DATA analytics ,NURSING education ,CODES of ethics ,INFORMATION resources ,PHILOSOPHY of nursing ,NURSING research ,NURSING practice ,PUBLIC health ,DATA quality ,DATA analysis software ,HEALTH equity ,MEDICAL ethics - Abstract
Big data refers to extremely large data generated at high volume, velocity, variety, and veracity. The nurse scientist is uniquely positioned to leverage big data to suggest novel hypotheses on patient care and the healthcare system. The purpose of this paper is to provide an introductory guide to understanding the use and capability of big data for nurse scientists. Herein, we discuss the practical, ethical, social, and educational implications of using big data in nursing research. Some practical challenges with the use of big data include data accessibility, data quality, missing data, variable data standards, fragmentation of health data, and software considerations. Opposing ethical positions arise with the use of big data, and arguments for and against the use of big data are underpinned by concerns about confidentiality, anonymity, and autonomy. The use of big data has health equity dimensions and addressing equity in data is an ethical imperative. There is a need to incorporate competencies needed to leverage big data for nursing research into advanced nursing educational curricula. Nursing science has a great opportunity to evolve and embrace the potential of big data. Nurse scientists should not be spectators but collaborators and drivers of policy change to better leverage and harness the potential of big data. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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19. Weekly Policy Papers.
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EDUCATION policy ,LEGISLATIVE libraries ,RESEARCH institutes ,ARTIFICIAL intelligence - Abstract
The article delves into various policy papers recently published by the UK Government and parliamentary libraries, as well as insights from think tanks and other organizations. It covers topics such as T Level education plans, the integration of AI (artificial intelligence) in education regulation, findings from the National Behaviour Survey, and discussions on child poverty statistics and the UK's policy response.
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- 2024
20. The Future of Heritage Science and Technologies: Papers from Florence Heri-Tech 2022.
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Furferi, Rocco, Colombini, Maria Perla, Seymour, Kate, Pelagotti, Anna, and Gherardini, Francesco
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GEOGRAPHIC information systems ,SCIENTIFIC literature ,SPECTRAL imaging ,ARTIFICIAL intelligence ,ULTRASONIC testing ,WORLD Heritage Sites ,MACHINE learning - Abstract
The article discusses the potential of advanced technologies in the field of cultural heritage. It highlights how these technologies, such as virtual reality, artificial intelligence, and 3D printing, can be used to understand, preserve, and enhance cultural heritage. The article also presents scientific papers from the Florence Heri-Tech International Conference, showcasing the various applications of these technologies. The papers cover topics such as the use of hyperspectral imaging for hieroglyph recognition, the enhancement of user experience in cultural spaces through advanced systems, and the use of non-invasive techniques for conservation. Overall, the article emphasizes the significant impact of technology on the research, preservation, and promotion of cultural heritage. [Extracted from the article]
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- 2024
- Full Text
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21. Reflections on the 2022 AMR Decade Award: Crowdsourcing as a Solution to Distant Search.
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Afuah, Allan and Tucci, Christopher L.
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CROWDSOURCING ,ARTIFICIAL intelligence ,PROFIT ,PROBLEM solving ,BUSINESS revenue ,AWARDS - Abstract
Since we wrote "Crowdsourcing as a solution to distant search" a decade ago, enthusiasm for crowdsourcing's capacity to produce remarkable solutions to some problems has continued to grow, and profiting from crowdsourced solutions has become a strategic goal for more and more firms. Crowdsourcing research has progressed impressively, with more progress made in researching the phenomenon than in theorizing about it. We are deeply honored by the 2022 Decade Award. In this manuscript, we reflect on the factors that led to this progress in crowdsourcing research, and how the theoretical insights from our paper––e.g., markets in the hierarchies-markets dichotomy are made up of markets with ex ante contracts and crowdsourcing (markets with no ex ante contracts)––may have influenced that progress. Also, because profits have become the ultimate goal of a large number of the seekers of solutions through crowdsourcing, we present an outline of a framework for exploring the impact of crowdsourcing on a seeker's profitability. The framework builds on insights from the paper and new constructs in crowdsourcing such as artificial intelligence (AI), the crowdsourcing process, revenue models, complementary assets, and organizing to minimize crowdsourcing disadvantages that we have added. We conclude with suggestions for future research. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
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22. Editorial Introduction.
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Zwass, Vladimir
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AVATARS (Virtual reality) ,MANAGEMENT information systems ,ARTIFICIAL intelligence ,INFORMATION resources management ,EMPLOYEE reviews ,ONLINE marketplaces - Abstract
The Journal of Management Information Systems has published a special issue that focuses on two main topics: the interaction between humans and artificial intelligence (AI), and cybersecurity. The first set of papers explores the impact of generative AI on human accomplishment and productivity, as well as the concerns surrounding employment and the survival of humans in the face of AI. The second set of papers addresses the increasing importance of cybersecurity in the face of sophisticated cyberattacks and the need for a broader understanding of cybersecurity and the use of AI to combat these threats. Other topics covered in the issue include the role of AI in employee performance evaluation, the collaboration between AI and humans in demand forecasting, the effectiveness of fear appeals in shaping employee cybersecurity posture, the relationship between IT innovativeness and the risk of data breaches, the impact of avatars on community identification in virtual social worlds, the performance of foreign IT complementors in mobile app startups, the impact of open-source software communities on cryptocurrency prices, the influence of social relationships on online reviews, the digitalization of loyalty in online reward programs, and the optimization of brand offerings in online marketplaces. [Extracted from the article]
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- 2023
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23. Reviving the Philosophical Dialogue with Large Language Models.
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Smithson, Robert and Zweber, Adam
- Subjects
LANGUAGE models ,PHILOSOPHY education ,PLAGIARISM ,STUDENT assignments ,ARTIFICIAL intelligence - Abstract
Many philosophers have argued that large language models (LLMs) subvert the traditional undergraduate philosophy paper. For the enthusiastic, LLMs merely subvert the traditional idea that students ought to write philosophy papers "entirely on their own." For the more pessimistic, LLMs merely facilitate plagiarism. We believe that these controversies neglect a more basic crisis. We argue that, because one can, with minimal philosophical effort, use LLMs to produce outputs that at least "look like" good papers, many students will complete paper assignments in a way that fails to develop their philosophical abilities. We argue that this problem exists even if students can produce better papers with AI and even if instructors can detect AI-generated content with decent reliability. But LLMs also create a pedagogical opportunity. We propose that instructors shift the emphasis of their assignments from philosophy papers to "LLM dialogues": philosophical conversations between the student and an LLM. We describe our experience with using these types of assignments over the past several semesters. We argue that, far from undermining quality philosophical instruction, LLMs allow us to teach philosophy more effectively than was possible before. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
24. A novel artificial neural network approach for residual life estimation of paper insulation in oil‐immersed power transformers.
- Author
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Nezami, Md. Manzar, Equbal, Md. Danish, Ansari, Md. Fahim, Alotaibi, Majed A., Malik, Hasmat, García Márquez, Fausto Pedro, and Hossaini, Mohammad Asef
- Subjects
ARTIFICIAL neural networks ,POWER transformers ,TRANSFORMER insulation ,ARTIFICIAL intelligence ,MATHEMATICAL optimization - Abstract
Avoiding financial losses requires preventing catastrophic oil‐filled power transformer breakdowns. Continuous online transformer monitoring is needed. The authors use paper insulation to evaluate transformer health for continuous online transformer monitoring. The study suggests a new artificial intelligence method for estimating paper insulation residual life in oil‐immersed power transformers. The four artificial intelligence models use backpropagation‐based neural networks to predict paper insulation lifespan. Four primary transformer insulating paper failure indices—degree of polymerisation, 2‐furfuraldehyde, carbon monoxide, and carbon dioxide—form the basis of these models. Each model, including the backpropagation‐based neural networks, estimates paper insulation life using one failure index, along with moisture and temperature data. Optimisation techniques enhance hidden layer neurons and epoch count for improved performance. Results are validated against literature‐based life models, establishing a precise input–output correlation. This method accurately predicts the remaining useable life of power transformer paper insulation, enabling utilities to take proactive measures for safe and efficient transformer operation. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
25. Can artificial intelligence produce a convincing accounting research article?
- Author
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du Toit, Elda
- Abstract
Purpose: This study aims to establish whether accounting research articles can be potentially generated by artificial intelligence. If artificial intelligence can produce quality work, the integrity of academic research may be compromised. Design/methodology/approach: ChatGPT was used to create a paper on a meta-analysis of the relationship between sustainability reporting and value relevance. After the paper was generated, references had to be added by hand based on the citations created by ChatGPT. The paper was then presented as-is for review. Findings: ChatGPT was able to create a relatively good-quality research paper that received two major revisions from independent specialists in the field of accounting and finance. Even though there is uncertainty regarding the appropriateness of all the references and the results cannot be confirmed, there is a risk that a reviewer may find the paper publishable because reviewers are not compelled to check references and the accuracy of results if proper methods were used that appear to be sufficient at face value. Originality/value: Artificial intelligence for academic writing is still relatively new, and there is still significant uncertainty as to the impact it may have on scholarly research. This is especially problematic because artificial intelligence applications improve by the second. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
26. Impact of artificial intelligence and machine learning in the insurance industry: A bibliometric analysis 2000-2022.
- Author
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Selvakumar, Lokesh and Shanmugam, Vasantha
- Subjects
ARTIFICIAL intelligence ,BIBLIOMETRICS ,INSURANCE companies ,COMPUTER science ,COMPUTER science conferences ,MACHINE learning ,CONFERENCE papers - Abstract
Artificial Intelligence (AI) and Machine Learning (ML) transforming the Insurance industry by improving efficiency, reducing costs, and providing a better customer experience. As these technologies continue to evolve, more innovation can be expected in the Insurance industry. A Bibliographic analysis is conducted for scientific mapping based on 1,084 SCOPUS-indexed publications between the year 2000-2022 using VOSviewer Application. The Analysis was conducted based on Publications by year, Source, Author, Affiliation, Country, Type, Subject Area and Funding Sponsors. The research found the result, the year 2022 had the highest publication of 203, through documents per year by the source of Lecture Notes In Computer Science Including Subseries Lecture Notes In Artificial Intelligence And Lecture Notes In Bioinformatics at 43 publications, Bauder, R.A. author is the maximum contributor, Harvard Medical School has been the major affiliate, United States of America, has the maximum 341 publications, Conference paper has the majority participation at 412 documents at 38 percent and Keywords "Artificial intelligence", Machine Learning" and "Insurance" has the highest occurrence. The maximum number of publications inthe field of computer science at 28 percent. Overall, this bibliographic analysis provides a comprehensive overview of the current state of research in AI and Machine Learning in the Insurance industry and highlights the potential for further innovation and development in this field. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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- View/download PDF
27. LLM potentiality and awareness: a position paper from the perspective of trustworthy and responsible AI modeling.
- Author
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Sarker, Iqbal H.
- Subjects
LANGUAGE models ,TRUST ,ARTIFICIAL intelligence ,RISK perception ,AWARENESS - Abstract
Large language models (LLMs) are an exciting breakthrough in the rapidly growing field of artificial intelligence (AI), offering unparalleled potential in a variety of application domains such as finance, business, healthcare, cybersecurity, and so on. However, concerns regarding their trustworthiness and ethical implications have become increasingly prominent as these models are considered black-box and continue to progress. This position paper explores the potentiality of LLM from diverse perspectives as well as the associated risk factors with awareness. Towards this, we highlight not only the technical challenges but also the ethical implications and societal impacts associated with LLM deployment emphasizing fairness, transparency, explainability, trust and accountability. We conclude this paper by summarizing potential research scopes with direction. Overall, the purpose of this position paper is to contribute to the ongoing discussion of LLM potentiality and awareness from the perspective of trustworthiness and responsibility in AI. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
28. Disposable and Flexible Paper‐Based Optoelectronic Synaptic Devices for Physical Reservoir Computing.
- Author
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Komatsu, Hiroaki, Hosoda, Norika, Kounoue, Toshiya, Tokiwa, Kazuyasu, and Ikuno, Takashi
- Subjects
OPTOELECTRONIC devices ,SIGNAL processing ,SHORT-term memory ,ARTIFICIAL intelligence ,DISPOSABLE medical devices ,CHRONOBIOLOGY ,COGNITIVE computing - Abstract
Health monitoring using wearable artificial intelligence (AI) sensors with sensing and cognitive capabilities has garnered significant attention. The development of self‐contained AI sensors that can operate with low power consumption, akin to the human brain, is necessary. Physical reservoir computing (PRC), which mimics the human brain using physical phenomena, offers a low‐power consumption architecture. Nevertheless, creating a flexible and easily disposable sensors using PRC capable of processing optical signals with sub‐second response times suitable for biological signals presents a challenge. In this study, a disposable and flexible paper‐based optoelectronic synaptic devices are designed, which are composed of nanocellulose and ZnO nanoparticles, for PRC. This device exhibits synaptic photocurrent in response to optical input. To assess its performance, a classification and time‐series forecasting tasks are conducted. The memory capacity of short‐term memory task, indicating the device's ability to store past information, is 1.8. The device can recognize handwritten digits with an accuracy of 88%. These results highlight the potential of the device for PRC. In addition, subjecting the device to 1000 rounds of bending do not affect its accuracy. Furthermore, the device burn in a few seconds, much like regular office paper, demonstrating its disposability. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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- View/download PDF
29. Editorial Introduction.
- Author
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Zwass, Vladimir
- Subjects
ARTIFICIAL intelligence ,GENERATIVE artificial intelligence ,INFORMATION technology ,LANGUAGE models ,MANAGEMENT information systems ,COGNITIVE computing ,DEEP learning - Abstract
The Journal of Management Information Systems has published a special section on cognitive reapportionment in relation to artificial intelligence (AI) and advances in computing. The section explores the allocation of tasks between humans and machines as AI becomes more capable of cognitive tasks. The limitations of current AI systems are discussed, as well as the potential for collaboration between humans and AI. The journal also includes papers on topics such as knowledge-aware models, crowdsourcing, social media effects, and the impact of government contracting on high-tech firms. [Extracted from the article]
- Published
- 2024
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- View/download PDF
30. Special Issue "Feature Review Papers in Mechanical Engineering".
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Renna, Paolo and Ambrico, Michele
- Subjects
MECHANICAL engineering ,FLEXIBLE manufacturing systems ,AEROSPACE engineering ,ROBOT programming ,ARTIFICIAL intelligence ,ENGINEERING design - Abstract
This document is a summary of a special issue in the journal Applied Sciences titled "Feature Review Papers in Mechanical Engineering." The issue covers various topics in mechanical engineering, including crank-slide actuating mechanisms, industrial robots, cellular manufacturing systems, shape memory alloys, and the application of Constructal theory. The articles explore the advancements, challenges, and potential solutions in these areas, aiming to enhance efficiency, adaptability, sustainability, and control in mechanical systems. The research presented in this special issue offers valuable insights and directions for further study in the field of mechanical engineering. [Extracted from the article]
- Published
- 2024
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31. Chatbot Invasion.
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Stokel-Walker, Chris
- Subjects
CHATBOTS ,LANGUAGE models ,SCIENTIFIC literature ,ACADEMIC librarians ,ARTIFICIAL intelligence - Abstract
A recent article in Scientific American discusses the concern among scientists that chatbots, such as ChatGPT, are being misused to produce scientific literature. Researchers have identified certain keywords and phrases that tend to appear more often in AI-generated sentences than in human writing. However, automated AI text detectors are unreliable, and the involvement of AI in scientific papers is not always clear-cut. Librarian Andrew Gray's analysis suggests that at least 60,000 papers, slightly more than 1 percent of all scientific articles published globally last year, may have used a large language model. The use of AI in scientific writing raises concerns about the accuracy and integrity of the research. [Extracted from the article]
- Published
- 2024
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- View/download PDF
32. 35‐1: Invited Paper: Smart Pixelated Dimmer for High Ambient Contrast AR Displays.
- Author
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Chen, Hung-Shan, Chang, Chia-Ming, Chen, Chien-Chung, and Chen, Sung-Nan
- Subjects
ELECTRONIC paper ,LIQUID crystals ,IMAGE sensors ,ARTIFICIAL intelligence ,HEADSETS - Abstract
In augmented reality (AR) headset devices, virtual image visibility and power consumption are major challenges. In this paper, we presented smart pixelated dimmer that locally enhance the ambient contrast ratio. The dimmer is integrated with image sensor and low‐power edge AI processor to control the dimming automatically. Adopting smart pixelated dimmer provides AR devices the possibility to operate in high brightness environment. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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- View/download PDF
33. ELUCIDATION OF THE PAPER ROAD BY DATA SCIENCE. BASED ON QUANTITATIVE, QUALITATIVE RESEARCH AND AI MULTIDIMENSIONAL ANALYSIS.
- Author
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Shibazaki, Koji
- Subjects
DATA science ,QUALITATIVE research ,ARTIFICIAL intelligence - Published
- 2023
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34. Special Issue: Selected papers from the AIxIA 2023 Workshops.
- Author
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Brunello, Andrea and Croce, Danilo
- Subjects
LANGUAGE models ,ARTIFICIAL intelligence ,CAREGIVERS ,KNOWLEDGE base ,LANGUAGE ability testing ,DEEP learning - Abstract
The 2023 edition of the AIxIA Conference, held in Rome, brought together a large number of researchers and practitioners to discuss the most recent and important advancements in Artificial Intelligence (AI). The conference featured 19 workshops, organized by 77 experts, attracting 248 submissions and resulting in 16 proceedings. This special issue presents extended versions of selected papers initially showcased at these workshops. Each paper underwent rigorous review and represents a diverse array of topics, reflecting the multifaceted nature of the Italian AI community. The topics covered include ethical foundations to symbiotic AI, symbolic knowledge extraction from black-box models, creative influence prediction using graph theory, AI approaches to multidimensional poverty prediction, an assessment of AI-based supports for informal caregivers, deep learning-based EEG denoising, AI-assisted board-game-based learning, large language models for assessment and feedback in higher education, geometric reasoning in the Traveling Salesperson Problem, defeasible reasoning in weighted knowledge bases, and conditional computation in neural networks. These contributions demonstrate the innovative and interdisciplinary research within the AI community, offering valuable insights and advancing the field. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
35. The Research Interest in ChatGPT and Other Natural Language Processing Tools from a Public Health Perspective: A Bibliometric Analysis.
- Author
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Favara, Giuliana, Barchitta, Martina, Maugeri, Andrea, Magnano San Lio, Roberta, and Agodi, Antonella
- Subjects
BIBLIOMETRICS ,CHATGPT ,NATURAL language processing ,DATABASES ,PUBLIC health ,CONFERENCE papers - Abstract
Background: Natural language processing, such as ChatGPT, demonstrates growing potential across numerous research scenarios, also raising interest in its applications in public health and epidemiology. Here, we applied a bibliometric analysis for a systematic assessment of the current literature related to the applications of ChatGPT in epidemiology and public health. Methods: A bibliometric analysis was conducted on the Biblioshiny web-app, by collecting original articles indexed in the Scopus database between 2010 and 2023. Results: On a total of 3431 original medical articles, "Article" and "Conference paper", mostly constituting the total of retrieved documents, highlighting that the term "ChatGPT" becomes an interesting topic from 2023. The annual publications escalated from 39 in 2010 to 719 in 2023, with an average annual growth rate of 25.1%. In terms of country production over time, the USA led with the highest overall production from 2010 to 2023. Concerning citations, the most frequently cited countries were the USA, UK, and China. Interestingly, Harvard Medical School emerges as the leading contributor, accounting for 18% of all articles among the top ten affiliations. Conclusions: Our study provides an overall examination of the existing research interest in ChatGPT's applications for public health by outlining pivotal themes and uncovering emerging trends. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
36. Secured Transportation and Distribution of Examination Papers Using IOT and AI.
- Author
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Jaiman, Akash, Sharma, Aniva, Jaiman, Vikas, and Porwal, Naveen
- Subjects
ARTIFICIAL intelligence ,SMALL cities ,INTERNET of things ,CITIES & towns ,ELECTRONIC newspapers ,OPEN-ended questions - Abstract
In today's scenario of India most of the youth is preparing for some competitive exam. If we think behind 15–20 years the number of candidates appearing for competitive exams were in thousands but as the population is increasing exponentially in India day by day the number of candidates is increasing in lacks. We can observe by daily newspapers that most of the competitive exams are facing paper leak problems. Although online examination systems are more effective and secure as compared to offline examination systems because it's not easy to open the question paper before the time starts. On the other hand there are also various consequences where the examination process can be hacked online. But the main issue with online examination process is to lack of resources to conduct parallel examination of millions of candidates, lack of techno enabled exam centers in small cities etc. Our focus is to propose a system in which offline examination can be conducted at most of the govt. and private centers in metro cities as well as small techno backward cities with reduced possibility to leak the paper before commencement of examination. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
37. Artificial intelligence and organizational agility: An analysis of scientific production and future trends.
- Author
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Atienza-Barba, María, del Río-Rama, María de la Cruz, Meseguer-Martínez, Ángel, and Barba-Sánchez, Virginia
- Subjects
ARTIFICIAL intelligence ,BIBLIOMETRICS ,DIGITAL transformation ,CONFERENCE papers ,SCIENTIFIC community - Abstract
The advancement of Artificial Intelligence (AI) is progressing rapidly, compelling companies to integrate it within their operational frameworks to sustain competitiveness, primarily driven by its impact on organizational agility (OA). Nevertheless, the absence of a robust theoretical framework underscores the limited understanding of the relationship between AI and OA. Within this context, the research aims to establish foundational knowledge, delineate the evolutionary trajectory of the topic, and identify prospective avenues for inquiry. To achieve this objective, bibliometric analysis is employed to gain comprehensive insights into the interplay between these variables and discern trends within this research domain. The utilization of the Web of Science (WoS) and Scopus databases up to January 2024 facilitates data collection, while Bibliometrix and Visme are instrumental in crafting a scientific production map. The analysis corroborates the novelty and growth potential of the subject matter, underscoring heightened author interest, particularly evident in 2023, against a backdrop of sparse and temporally dispersed publications until 2017. Notably, the prevalence of conference papers on this topic stands significantly high at 26.98 % in comparison to the total contributions, indicative of the research community's engagement. Furthermore, the findings underscore a robust association between the keywords AI and OA, delineating a burgeoning research domain that converges with the digital transformation of enterprises and the Theory of Standardization Process. The effective integration of AI into corporate operational frameworks marks the zenith of this transformative process, ushering in the genesis and overhaul of organizational routines. This study represents a pioneering endeavour within the literature, as it constitutes the inaugural bibliometric exploration of this subject matter. Moreover, it serves to underpin the establishment of theoretical underpinnings for future research endeavours as it outlines current trends and emerging future research trajectories, concerning the role of AI in OA. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
38. Empathic pedagogical conversational agents: A systematic literature review.
- Author
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Ortega‐Ochoa, Elvis, Arguedas, Marta, and Daradoumis, Thanasis
- Subjects
PSYCHOLOGICAL feedback ,NATURAL language processing ,PSYCHOLOGY of students ,ARTIFICIAL intelligence ,PRIOR learning ,CONFERENCE papers - Abstract
Artificial intelligence (AI) and natural language processing technologies have fuelled the growth of Pedagogical Conversational Agents (PCAs) with empathic conversational capabilities. However, no systematic literature review has explored the intersection between conversational agents, education and emotion. Therefore, this study aimed to outline the key aspects of designing, implementing and evaluating these agents. The data sources were empirical studies, including peer‐reviewed conference papers and journal articles, and the most recent publications, from the ACM Digital Library, IEEE Xplore, ProQuest, ScienceDirect, Scopus, SpringerLink, Taylor & Francis Online, Web of Science and Wiley Online Library. The remaining papers underwent a rigorous quality assessment. A filter study meeting the objective was based on keywords. Comparative analysis and synthesis of results were used to handle data and combine study outcomes. Out of 1162 search results, 13 studies were selected. The results indicate that agents promote dialogic learning, proficiency in knowledge domains, personalized feedback and empathic abilities as essential design principles. Most implementations employ a quantitative approach, and two variables are used for evaluation. Feedback types play a vital role in achieving positive results in learning performance and student perceptions. The main limitations and gaps are the time range for literature selection, the level of integration of the empathic field and the lack of a detailed development stage report. Moreover, future directions are the ethical implications of agents operating beyond scheduled learning times and the adoption of Responsible AI principles. In conclusion, this review provides a comprehensive framework of empathic PCAs, mostly in their evaluation. The systematic review registration number is osf.io/3xk6a.Practitioner notesWhat is already known about this topicEmotions play a pivotal role in shaping the interaction process, making it essential to consider them when designing methodological strategies or learning tools.Empathic Pedagogical Conversational Agents (PCAs) have emerged as a crucial approach for enhancing and personalizing the learning experience (24/7) for pupils and supporting human teachers in their teaching process.Despite the creation of numerous empathic PCAs, there is a scarcity of Systematic Literature Reviews (SLRs) on their application in the educational field, particularly concerning the integration of emotional abilities in combination with the competencies of each subject.What this paper addsIt offers new insights into the design principles underlying the integration of the empathic field.It reviews different approaches for incorporating students' prior knowledge in real time.It provides a comprehensive and up‐to‐date overview of the research designs used for implementation, including quantitative, qualitative and mixed methods.It examines the factors that influence the effectiveness of empathic PCA in teaching and learning.It evaluates the types of feedback that enhance the impact of the empathic field on learning outcomes.Implications for practice and/or policyIt is crucial to grasp the topics that this paper introduces in order to effectively integrate new learning tools into any context.Techno‐pedagogical designers seeking to gain insights into empathic PCAs will find immense value in this SLR, as it comprehensively covers each stage of the process.For future research endeavours, this study offers a wealth of ideas to draw upon, enabling researchers to address the challenges outlined and explore new avenues of investigation. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
39. A comprehensive review towards resilient rainfall forecasting models using artificial intelligence techniques.
- Author
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Saleh, Abu, Rasel, H. M., and Ray, Briti
- Subjects
RAINFALL ,ARTIFICIAL intelligence ,SUSTAINABLE engineering ,CLIMATE change ,WEATHER forecasting - Abstract
Rainfall is one of the remarkable hydrologic variables that is directly connected to the sustainable environment for any region over the globe. The present study aims to review different research papers on rainfall forecasting using artificial intelligence (AI) models including a bibliographic assessment of the most popular AI models and a comparison of the results based on the accuracy parameters. 39 journal papers, published in renowned international journals from 2000 to 2023, were studied extensively to categorize modeling techniques, best models, characteristics of input data, the period for the input variables, data division, and so forth. Although certain drawbacks still exist, the results of reviewed studies suggest that AI models may help simulate rainfall in various geographic locations. In some cases, the data splitting mechanism was delivered to the model itself so that the model accuracy gets improved. The recommendations from the reviewed papers will help future researchers fill the research gaps, especially tuning the hyperparameters while building the training models. Hybrid models were advised in some cases to minimize the gap between the simulated and the observed data. All recommendations from reviewed papers aimed to achieve a resilient rainfall forecasting model in the era of climate change. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
40. The use of artificial intelligence to advance sustainable supply chain: retrospective and future avenues explored through bibliometric analysis.
- Author
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Zejjari, Ibtissam and Benhayoun, Issam
- Subjects
BIBLIOMETRICS ,TECHNOLOGICAL innovations ,ARTIFICIAL intelligence ,SUPPLY chains ,SCIENCE databases - Abstract
Keeping up with the hastily growing economy implies undergoing unremitting transformation permanently. In the field of supply chain, such progress can only be guaranteed via the exploration of new horizons and innovative solutions in response to the constraints of the global market. Emerging technologies, particularly artificial intelligence, offer promising avenues for enhancing supply chain processes, with sustainability ascending as a critical consideration. Despite the recent surfacing of AI-driven applications, scant attention has been devoted to exploring their full potential within supply chain operations, particularly in conjunction with SDGs. Recognizing the untapped opportunities presented by the implementation of AI for a sustainable supply chain this study undertakes a bibliometric analysis of 236 research papers sourced from the Web of science database. The analysis utilizes R language BiblioShiny to examine the extracted papers, and dissect patterns, trends, and relationships among key concepts and themes as well as prominent topics, impactful authors, and leading journals and countries in this domain. The findings reveal substantial growth in research related to SCM, AI, and sustainability as the UK leads this field of study with 132 articles followed by India, China and the USA. Eventually, the National University of Singapore came first in terms of paper affiliations, followed by De La Salle University, and London Metropolitan University. These results only prove that sustainability is becoming more critical in the equation of AI-driven supply chains especially with the current socio-political and economic circumstances, constituting a solid base for further academic research and more innovations in the managerial and business-related policies in this field. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
41. Development of a 3D Digital Model of End-of-Service-Life Buildings for Improved Demolition Waste Management through Automated Demolition Waste Audit.
- Author
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Omer, Muhammad, Wang, Yong C., Quintana Roma, Mikel, Bedrich, Stanislav, Nežerka, Václav, Ferriz-Papi, Juan, Moros Montanes, Jesus J., and Diez Ortiz, Ines
- Subjects
CONSTRUCTION & demolition debris ,WASTE products as building materials ,HAZARDOUS wastes ,WASTE products ,WASTE management - Abstract
This paper presents the development of a 3D digital model of end-of-service-life buildings to facilitate a step change in preparation of pre-demolition protocols that can eliminate problems of inadequate documentation and extensive time spent in preparing pre-demolition audits. The 3D digital model consists of the following four main components: (i) digitization of paper-based drawings and their conversion to CAD; (ii) automated generation of a 3D digital model from CAD; (iii) corrections to the 3D digital model to account for changes in the lifetime of a building; (iv) a sub-model for performing pre-demolition audit. This paper proposes the innovative approaches of incorporating a minimal amount of human intervention to overcome numerous difficulties in automated drawing analysis, application of augmented reality (AR) in corrections to the 3D digital model, and data compatibility for pre-demolition audit. These processes are demonstrated using one building as case study. Using the digital model, a pre-demolition audit can be prepared in minutes rather than the many days required in current practice without a digital model. The accurate quantification of the quantities and locations of different demolition waste materials and products in buildings to be demolished will enable a systematic and quantitative evaluation of potentials of material and product reuse and eliminate contamination of different demolition waste streams (which may contain hazardous waste), which is the main cause of environmental degradation and downcycling of demolition waste materials. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
42. Detection of fake papers in the era of artificial intelligence.
- Author
-
Dadkhah, Mehdi, Oermann, Marilyn H., Hegedüs, Mihály, Raman, Raghu, and Dávid, Lóránt Dénes
- Subjects
ARTIFICIAL intelligence ,MACHINE learning ,DECISION trees ,PAPER mills - Abstract
Paper mills, companies that write scientific papers and gain acceptance for them, then sell authorships of these papers, present a key challenge in medicine and other healthcare fields. This challenge is becoming more acute with artificial intelligence (AI), where AI writes the manuscripts and then the paper mills sell the authorships of these papers. The aim of the current research is to provide a method for detecting fake papers. The method reported in this article uses a machine learning approach to create decision trees to identify fake papers. The data were collected from Web of Science and multiple journals in various fields. The article presents a method to identify fake papers based on the results of decision trees. Use of this method in a case study indicated its effectiveness in identifying a fake paper. This method to identify fake papers is applicable for authors, editors, and publishers across fields to investigate a single paper or to conduct an analysis of a group of manuscripts. Clinicians and others can use this method to evaluate articles they find in a search to ensure they are not fake articles and instead report actual research that was peer reviewed prior to publication in a journal. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
43. Industrial intelligence-driven production and operations management.
- Author
-
Chan, Felix T. S. and Ding, Kai
- Subjects
PRODUCTION management (Manufacturing) ,OPERATIONS management ,DEEP learning ,ARTIFICIAL intelligence ,INDUSTRIAL research ,PROCESS control systems - Abstract
The orders makespan and resources utilisation are considered as the objective function of the model, and the heterogeneous production resources and logistics resources are integrated to autonomously communicate and interact with each other to bidding for the dynamic production-logistics-integrated operation tasks. The aim of this special issue is to encourage original and latest contributions, and to review and survey research and development on industrial intelligence-driven production and operations management, focusing on state-of-the-art and potential future approaches and technologies and providing a good starting point for researchers entering these research areas. Then, to evaluate the tolerance and persistence capabilities of MSC under supply and demand uncertainties, a graph-based operational robustness analysis method of the IIoT platform for MSC is proposed. The 8th paper entitled 'An integrative decision-making model for the Internet of Things-enabled supply chains of fresh agri-product', by Han et al. proposed a mixed-integer programming model to generate integrative decision-making in the Internet of Things (IoT)-enabled fresh agri-products supply chains. [Extracted from the article]
- Published
- 2023
- Full Text
- View/download PDF
44. Research Trends in Artificial Intelligence and Security—Bibliometric Analysis.
- Author
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Ilić, Luka, Šijan, Aleksandar, Predić, Bratislav, Viduka, Dejan, and Karabašević, Darjan
- Subjects
DEEP learning ,BIBLIOMETRICS ,ARTIFICIAL intelligence ,WEB analytics ,MACHINE learning ,PUBLIC health infrastructure - Abstract
This paper provides a bibliometric analysis of current research trends in the field of artificial intelligence (AI), focusing on key topics such as deep learning, machine learning, and security in AI. Through the lens of bibliometric analysis, we explore publications published from 2020 to 2024, using primary data from the Clarivate Analytics Web of Science Core Collection. The analysis includes the distribution of studies by year, the number of studies and citation rankings in journals, and the identification of leading countries, institutions, and authors in the field of AI research. Additionally, we investigate the distribution of studies by Web of Science categories, authors, affiliations, publication years, countries/regions, publishers, research areas, and citations per year. Key findings indicate a continued growth of interest in topics such as deep learning, machine learning, and security in AI over the past few years. We also identify leading countries and institutions active in researching this area. Awareness of data security is essential for the responsible application of AI technologies. Robust security frameworks are important to mitigate risks associated with AI integration into critical infrastructure such as healthcare and finance. Ensuring the integrity and confidentiality of data managed by AI systems is not only a technical challenge but also a societal necessity, demanding interdisciplinary collaboration and policy development. This analysis provides a deeper understanding of the current state of research in the field of AI and identifies key areas for further research and innovation. Furthermore, these findings may be valuable to practitioners and decision-makers seeking to understand current trends and innovations in AI to enhance their business processes and practices. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
45. From education to practice—2024 update: An opinion paper of the Drug Information Practice and Research Network of the American College of Clinical Pharmacy.
- Author
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Johnson, Steven Theodore, Goldwire, Micheline Andel, Abdalla, Maha, Al‐Shehre, Wafa H., Bernknopf, Allison, Colella, Angela, Denton, Christie, Douglas, Janine S., Gosser, Rena, Heindel, Gregory, Holsopple, Megan, Ipema, Heather, Kier, Karen, Kostrzewa, Audrey, Majerczyk, Dan, May, Dianne, May, J. Russell, Mersek, Sarah Turley, Munir, Faria, and Saad, Maha
- Subjects
VOCATIONAL guidance ,PHARMACY colleges ,INFORMATION professionals ,MEDICAL writing ,DRUG accessibility ,ARTIFICIAL intelligence - Abstract
Drug information specialists (DIS) bring unique, specialized expertise and provide services in diverse settings including health systems, academia, pharmaceutical industry, compendia, medical writing, and other areas. With widespread access to drug information (DI) resources through user‐friendly, online platforms, the role of DIS has shifted. Core skill sets once confined to DIS are now distributed across various non‐DIS clinical specialties. DIS have transformed the application of their specialized skill set and adapted it to a variety of traditional and nontraditional areas, providing and applying advanced expertise to solve a variety of contemporary challenges. The training of students and residents has evolved to include evidence‐based practical contemporary methods that promote critical thinking and reasoning. Effective DI evaluation and communication necessitates customizing content for stakeholders to ensure understanding and contribute to optimal patient care, all while addressing misinformation and disinformation. The future of DI as a specialty is bright, with ever‐increasing recognition of the importance of DI skills in non‐DIS practitioners. DIS will likely continue to guide best practices in the education/training of new practitioners and continue to provide advanced services and formulary analytics. This update to our 2009 DI PRN Opinion paper will focus on: (1) DI education and training needed for all students, residents, and pharmacists; (2) career opportunities, roles, and responsibilities specifically tailored for DIS in health systems, managed care organizations, academia, pharmaceutical/biotechnology industry, and medical writing services; and (3) the future direction of DI, including the potential impact of artificial intelligence. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
46. 52‐2: Invited Paper: Intelligent Display Design Integrated in the 55 4K LCD Cell.
- Author
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Chen, Dongchuan, Su, Qiujie, Miao, Yingmeng, Yang, Tao, Liu, Dong, Hu, Pengfei, Shao, Xinbin, Zhao, Chongyang, Qin, Wei, Qu, Yingying, Lee, Seungmin, and Wang, Wenchao
- Subjects
LIQUID crystal displays ,TEMPERATURE sensors ,ARTIFICIAL intelligence ,DESIGN - Abstract
This paper presented intelligent display technologies integrated in the 55‐inch 4K LCD cell based on a‐Si process. Adaptive adjustment of backlight brightness and optimization of LC response time were achieved utilizing the ALS and TS integration. By using the novel GOA architecture and TCON IC, dynamic local refresh at any position and with different refresh rate at different area on panel were achieved. The power consumption of GOA and data drivers can be reduced by up to 50% respectively. This technology provides hardware foundation for the realization of AI intelligent display. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
47. Utilizing different artificial intelligence techniques for efficient condition assessment of building components.
- Author
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Ahmed, Hani, Mostafa, Kareem, and Hegazy, Tarek
- Subjects
ARTIFICIAL intelligence ,CONVOLUTIONAL neural networks ,FACILITY management ,INSPECTION & review ,ELECTRONIC paper ,DOMESTIC architecture - Abstract
Facility management maintains building service quality through cycles of condition assessments and rehabilitation. Building components, however, differ in their nature, service lives, deterioration patterns, and textual/visual inspection data. This complicates the condition assessment process and subsequent rehabilitation decisions. This paper proposes a smart condition assessment framework that uses different artificial intelligence (AI) techniques that suit the condition data analysis of different building components. The framework has been applied to a dataset of over 2000 maintenance requests for roof and heating, ventilation, and air conditioning (HVAC) systems across a 600-villa portfolio. To address their varying needs, convolutional neural networks were used on images of roof defects, while enhanced data mining was used on textual data of HVAC systems. Accordingly, work packages of deteriorated components were identified, and a 60-day schedule was developed to repair 203 HVAC units. This research shows how AI can assist facility management with respect to condition assessment, rehabilitation planning, and resource allocation. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
48. Fostering Undergraduate Academic Research: Rolling out a Tech Stack with AI-Powered Tools in a Library.
- Author
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Michalak, Russell
- Subjects
ARTIFICIAL intelligence ,ACADEMIC libraries ,UNIVERSITY research ,UNDERGRADUATES ,RESEARCH personnel ,MACHINE learning - Abstract
With the increasing integration of AI tools like Yewno Discover, Scholarcy, and Grammarly in academic libraries, undergraduate research has witnessed transformative changes. These tools, while elevating the research process, also bring forth challenges rooted in ethics and application. This paper explores the synergy between modern technology and academic exploration, highlighting the benefits and potential pitfalls of using AI in the research workflow. It emphasizes that while Yewno Discover and similar tools offer streamlined navigation of vast information databases, it is imperative for undergraduates to remain cognizant of potential biases and other ethical considerations. This paper underscores the need for proactive measures in academic settings, including specialized training and policy development, to ensure that undergraduate researchers harness the power of AI responsibly and efficiently. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
49. The agentic role of psychotherapy in retaining human connection in the age of technology: A response paper.
- Author
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Balick, Aaron
- Subjects
PSYCHOTHERAPY ,INTERPERSONAL relations ,PSYCHOTHERAPISTS ,COVID-19 - Abstract
Copyright of European Journal of Psychotherapy & Counselling is the property of Routledge and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2024
- Full Text
- View/download PDF
50. A Review Paper on Exploring the Concept of Data Science: A Comprehensive Analysis.
- Author
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Gaikwad, Samiksha, Chaudhari, Parimal, Jadhav, Dipali, Bodade, Punam, and Shirbhate, Dhiraj
- Subjects
DATA science ,TECHNOLOGICAL innovations ,ARTIFICIAL intelligence ,BLOCKCHAINS ,EDGE computing ,MACHINE learning - Abstract
Data science is a rapidly growing technology in the technical world that fulfills the requirements for data and various data aspects. The core of all emerging technologies is data science, which includes machine learning, artificial intelligence, robotics, edge computing, and blockchain technology. In this review paper, we consider the detailed concept on data science, such as where the data is generated, the skills to handle data, its growth, how it works, and the impact of data science on other technologies. The basic aim of this review paper is to provide a basic summary of data science that everyone easily understands. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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