2,509 results
Search Results
2. 'Catch Me If You Can'. ChatGPT today: artificial intelligence able to write a scientific paper for us or is it a game of imitation?
- Author
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M. I. Kogan and S. N. Ivanov
- Subjects
chatgpt ,artificial intelligence ,ai ,urology ,Diseases of the genitourinary system. Urology ,RC870-923 - Abstract
The prospects for the use of artificial intelligence (AI) are one of the most discussed topics in medicine today. The very possibility of having an omniscient virtual assistant at hand soon seems incredibly tempting, so it seems quite normally to see numerous reports on the application of each newly emerging advanced neural network technology in various fields of medicine and biotechnology. Of course, the emergence of ChatGPT caused the greatest public outcry in recent times, because the new natural language processing algorithm underlying it has allowed human to bring communication between man and machine to a whole new level. Of course, despite the myriad benefits of using AI, the use of ChatGPT and other AI tools in medicine raises many ethical and legal questions. However, it is worth remembering the history of the emergence of any other breakthrough technology to accept the existing controversy as an integral part of progress. The desire of a person to make his work easier and shift part of the work onto a computer always makes him take a step forward in the development of technologies, which, in the end, do not allow a person to work less, but make him work in a new way.
- Published
- 2023
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3. AI and ML in School Level Computing Education: Who, What and Where?
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Mahon, Joyce, Becker, Brett A., Namee, Brian Mac, Filipe, Joaquim, Editorial Board Member, Ghosh, Ashish, Editorial Board Member, Prates, Raquel Oliveira, Editorial Board Member, Zhou, Lizhu, Editorial Board Member, Longo, Luca, editor, and O’Reilly, Ruairi, editor
- Published
- 2023
- Full Text
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4. Unveiling Recent Trends in Biomedical Artificial Intelligence Research: Analysis of Top-Cited Papers
- Author
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Benjamin S. Glicksberg and Eyal Klang
- Subjects
AI ,machine learning ,multiomics ,medical imaging ,personal medicine ,health informatics ,Technology ,Engineering (General). Civil engineering (General) ,TA1-2040 ,Biology (General) ,QH301-705.5 ,Physics ,QC1-999 ,Chemistry ,QD1-999 - Abstract
This review analyzes the most influential artificial intelligence (AI) studies in health and life sciences from the past three years, delineating the evolving role of AI in these fields. We identified and analyzed the top 50 cited articles on AI in biomedicine, revealing significant trends and thematic categorizations, including Drug Development, Real-World Clinical Implementation, and Ethical and Regulatory Aspects, among others. Our findings highlight a predominant focus on AIs application in clinical settings, particularly in diagnostics, telemedicine, and medical education, accelerated by the COVID-19 pandemic. The emergence of AlphaFold marked a pivotal moment in protein structure prediction, catalyzing a cascade of related research and signifying a broader shift towards AI-driven approaches in biological research. The review underscores AIs pivotal role in disease subtyping and patient stratification, facilitating a transition towards more personalized medicine strategies. Furthermore, it illustrates AIs impact on biology, particularly in parsing complex genomic and proteomic data, enhancing our capabilities to disentangle complex, interconnected molecular processes. As AI continues to permeate the health and life sciences, balancing its rapid technological advancements with ethical stewardship and regulatory vigilance will be crucial for its sustainable and effective integration into healthcare and research.
- Published
- 2024
- Full Text
- View/download PDF
5. Does the Use of AI to Create Academic Research Papers Undermine Researcher Originality?
- Author
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Eisuke Nakazawa, Makoto Udagawa, and Akira Akabayashi
- Subjects
AI ,authorship ,ICMJE ,originality ,integrity ,Electronic computers. Computer science ,QA75.5-76.95 - Abstract
Manuscript writing support services using AI technology have become increasingly available in recent years. In keeping with this trend, we need to sort out issues related to authorship in academic writing. Authorship is attached to the contribution of researchers who report innovative research, the originality of which forms the core of their identity. The most important originality is demonstrated in the discussion of study findings. In the discussion section of this paper, we argue that if a researcher uses AI-based manuscript writing support to draft the discussion section, this does not necessarily diminish the researcher’s originality. Rather, AI support may allow the researcher to perform creative work in a more refined fashion. Presumably, selecting which AI support to use or evaluating and properly adjusting AI would still remain an important aspect of research for researchers. It is thus reasonable to view a researcher as a cooperative existence realized through a network of cooperative work that includes the use of AI. Discussions on this topic will be scientifically and socially important as AI technology advances in the future.
- Published
- 2022
- Full Text
- View/download PDF
6. A Novel Supply Chain-Based Framework for the Healthcare Industry: A Survey Paper
- Author
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Sandip D. Satav
- Subjects
IoT ,AI ,VMPS ,DSCSA ,opEx ,ML ,Electronic computers. Computer science ,QA75.5-76.95 - Abstract
In recent years, the healthcare industry has faced numerous challenges in ensuring efficient and reliable supply chain management. The emergence of novel supply chain-based frameworks has presented promising solutions to these challenges. This survey paper aims to explore and analyze the latest advancements in supply chain frameworks specifically tailored for the healthcare industry. We review the existing literature, identify key trends, and highlight the potential impact of these frameworks on improving patient care, optimizing inventory management, enhancing operational efficiency, and reducing costs. Additionally, we discuss the challenges and opportunities associated with the implementation of these frameworks and suggest future research directions.
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- 2023
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7. The Future of Software Engineering: Where Will Machine Learning, Agile, and Virtualization Take Us Next?
- Author
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Mancl, Dennis, Fraser, Steven D., van der Aalst, Wil, Series Editor, Mylopoulos, John, Series Editor, Rosemann, Michael, Series Editor, Shaw, Michael J., Series Editor, Szyperski, Clemens, Series Editor, Gregory, Peggy, editor, and Kruchten, Philippe, editor
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- 2021
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8. Proposal for requirements on industrial AI solutions
- Author
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Hoffmann, Martin W, Drath, Rainer, Ganz, Christopher, inIT - Institut für industrielle Informationstechnik, Beyerer, Jürgen, editor, Maier, Alexander, editor, and Niggemann, Oliver, editor
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- 2021
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9. Should Artificial Intelligence Be More Regulated? : Panel Discussion
- Author
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Strous, Leon, Rannenberg, Kai, Editor-in-Chief, Sakarovitch, Jacques, Editorial Board Member, Goedicke, Michael, Editorial Board Member, Tatnall, Arthur, Editorial Board Member, Neuhold, Erich J., Editorial Board Member, Pras, Aiko, Editorial Board Member, Tröltzsch, Fredi, Editorial Board Member, Pries-Heje, Jan, Editorial Board Member, Kreps, David, Editorial Board Member, Reis, Ricardo, Editorial Board Member, Furnell, Steven, Editorial Board Member, Furbach, Ulrich, Editorial Board Member, Winckler, Marco, Editorial Board Member, Malaka, Rainer, Editorial Board Member, Strous, Leon, editor, and Cerf, Vinton G., editor
- Published
- 2019
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10. Unveiling Recent Trends in Biomedical Artificial Intelligence Research: Analysis of Top-Cited Papers.
- Author
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Glicksberg, Benjamin S. and Klang, Eyal
- Subjects
ARTIFICIAL intelligence ,PROTEIN structure prediction ,TECHNOLOGICAL innovations ,MEDICAL education ,INDIVIDUALIZED medicine - Abstract
This review analyzes the most influential artificial intelligence (AI) studies in health and life sciences from the past three years, delineating the evolving role of AI in these fields. We identified and analyzed the top 50 cited articles on AI in biomedicine, revealing significant trends and thematic categorizations, including Drug Development, Real-World Clinical Implementation, and Ethical and Regulatory Aspects, among others. Our findings highlight a predominant focus on AIs application in clinical settings, particularly in diagnostics, telemedicine, and medical education, accelerated by the COVID-19 pandemic. The emergence of AlphaFold marked a pivotal moment in protein structure prediction, catalyzing a cascade of related research and signifying a broader shift towards AI-driven approaches in biological research. The review underscores AIs pivotal role in disease subtyping and patient stratification, facilitating a transition towards more personalized medicine strategies. Furthermore, it illustrates AIs impact on biology, particularly in parsing complex genomic and proteomic data, enhancing our capabilities to disentangle complex, interconnected molecular processes. As AI continues to permeate the health and life sciences, balancing its rapid technological advancements with ethical stewardship and regulatory vigilance will be crucial for its sustainable and effective integration into healthcare and research. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
11. A Study of the Decision - Making Support System Using AI : The Research of Preliminary Papers Survey for Applicability to Business
- Author
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Junichi, Watanabe and Michiharu, Masui
- Subjects
技術的特異点 ,Algorithm ,アルゴリズム ,合理的意思決定 ,Singularity ,AI ,Artificial Intelligence ,satisfaction decision-making ,特異点 ,満足化意思決定 ,Technology Singularity ,rational decision-making - Published
- 2022
12. Does the Use of AI to Create Academic Research Papers Undermine Researcher Originality?
- Author
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Nakazawa, Eisuke, Udagawa, Makoto, and Akabayashi, Akira
- Subjects
- *
ORIGINALITY , *UNIVERSITY research , *ACADEMIC discourse , *AUTHORSHIP - Abstract
Manuscript writing support services using AI technology have become increasingly available in recent years. In keeping with this trend, we need to sort out issues related to authorship in academic writing. Authorship is attached to the contribution of researchers who report innovative research, the originality of which forms the core of their identity. The most important originality is demonstrated in the discussion of study findings. In the discussion section of this paper, we argue that if a researcher uses AI-based manuscript writing support to draft the discussion section, this does not necessarily diminish the researcher's originality. Rather, AI support may allow the researcher to perform creative work in a more refined fashion. Presumably, selecting which AI support to use or evaluating and properly adjusting AI would still remain an important aspect of research for researchers. It is thus reasonable to view a researcher as a cooperative existence realized through a network of cooperative work that includes the use of AI. Discussions on this topic will be scientifically and socially important as AI technology advances in the future. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
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13. CALL FOR PAPERS: Intelligent Healthcare Systems - FREE OF CHARGES
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Vania V. Estrela, Nikolaos Andreopoulos, Ricardo Tadeu Lopes, Joaquim Teixeira de Assis, Andrey Terziev, Robert Sroufer, Vania Vieira Estrela, V. V. Estrela, Albany E. Herrmann, Edwiges G. H. Grata, Maria Aparecida de Jesus, and Monica Vianna
- Subjects
Health informatics ,IoT ,Ad hoc networks ,Public health ,Sensors ,Wearables ,Healthcare ,Smart drugs ,Health 4.0 ,Cyber-physical system ,Telemedicine ,Blockchain ,Artificial Intelligence ,AI ,Cloud computing ,Fog computing ,Implants ,ICT for Healthcare ,Wireless networks ,Biomedical engineering ,Actuators - Abstract
CALL FOR BOOK CHAPTERS INTELLIGENT HEALTHCARE SYSTEMS Scopus-indexed, Free of charges, published by CRC Press/Taylor & Francis Keywords: Health 4.0, Internet of Medical Things, Public Health, Disaster Mitigation, Vehicular Communications, Wireless Networks, Wearables, Artificial Intelligence in Healthcare, Cyber-Physical Systems, Smart Designs, Blockchain, Digital Twins, Telemedicine, 5G, Medical Imaging, Cloud Computing. Editor: Vania V. Estrela vania.estrela.phd@ieee.org Federal Fluminense University, RJ, Brazil Book Content Description Information is paramount to the healthcare sector, entailing intense data, medical epidemiologic sets, Internet browsing records, surveys, complex engineering models, and so on via the Cloud. This quest for knowledge prompts the data dimensionality, which calls for more sophisticated and efficient information strategies. Health science and biology are very complex fields fully embedded in information technology, but the associated processes are much too intricate to be faithfully modeled. It is not easy to extract knowledge starting from raw data, and it is also expensive. Artificial intelligence (AI) in healthcare (AIH) has been the primary concern to develop expert systems aimed for diagnostic and decision-making in knowledge acquisition, representation, reasoning, and explanation. Many healthcare facilities (HFs) have data acquisition, monitoring, and storage systems integrated into larger-scale information systems. This vast amount of information and databases stemming from medical applications cause hinder analysis and decision making. Hence, there is a need to develop better tools for accessing/storing/analyzing knowledge while effectively using multimodal data. These necessities become essential in the healthcare realm as decision-making relies on knowledge from multidisciplinary areas. This book intends to provide computational methods for intelligent health data analysis to narrow the gap between data gathering and data comprehension with applications in medicine, health care, biology, pharmacology, and related areas. Intelligent Data Analysis (IDA) expedites healthcare analyses and applications. IDA employs specialized statistical, pattern recognition, machine learning (ML), data abstraction, and visualization tools for analysis of data and discovery of mechanisms that created them. Healthcare data typically involve many records/variables, subtle interactions between entities, or a combination of all factors. Engineering, computing science, and ML empower data analysis tasks. The IDA extracts knowledge from too much data, with a vast amount of variables, data that represents very complex, nonlinear, real-life problems. IDA can help raw data analysis, coping with prediction tasks without knowing the theoretical description of the underlying process, classification tasks of new events, or modeling unknown processes. Classification, prediction, and modeling are the cornerstones brought in by IDA. This book focuses on AIH methods and tools to bridge data gathering and data comprehension. Emphasis will also be given to problem solving within HFs to handle patient records, data warehousing, intelligent alarming, competent monitoring, etc. In medicine, overcoming this gap is particularly crucial since medical decision-making needs comprehension of healthcare data regularities and trends. This book tackles different IDA approaches. Submission Schedule One-page abstract submission: May 20, 2021 Structured Abstract Template in Word Manuscript submission due: May 31, 2021 Manuscript Template in Word Manuscript Template in pdf Review notification with acceptance/rejection: June 30, 2021 Revised paper submission: July 31, 2021 Camera-Ready Submission: August 31, 2021  
- Published
- 2022
- Full Text
- View/download PDF
14. BIBLIOMETRIC ANALYSIS OF PAPER PUBLICATION FOR ARTIFICIAL INTELLIGENCE ON LIBRARIANSHIP SYSTEM WITH FULL AND FRACTIONAL METHOD
- Author
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Berliani, Kezia Putri and Yuadi, Imam
- Subjects
AI ,Counting ,Fractional ,Full Counting ,Librarianship ,Systems - Abstract
Knowing the bibliometric analysis of AI publications in the librarian system will be a great research opportunity because its development is very high. On the other hand, we can solve the convenience of current bibliometric analysis with bibliometric network applications, such as VOSViewer. However, the calculation is presented with two options, complete and fractional, for analysis. The bibliometric method is used to analyze the trend from time to time regarding AI in this library. The study uses Scopus to get data and VOSViewer to analyze, accompanied by trials with full and fractional methods. Through a restricted search of the past five years. AI has relevance to Librarianship Systems and trends in Digital Libraries. Then, it is found that there are differences in the calculation of the total and fractional methods that stand out in the bibliographic coupling approach. The development of AI in the librarian system is very high and is influenced by surrounding phenomena, while the choice of whole and fractional methods is not found to have absolute differences.
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- 2022
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15. Position paper on COVID-19 imaging and AI: From the clinical needs and technological challenges to initial AI solutions at the lab and national level towards a new era for AI in healthcare
- Author
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Hayit Greenspan, Wiro J. Niessen, Mads Nielsen, Raúl San José Estépar, Eliot L. Siegel, Radiology & Nuclear Medicine, and Medical Informatics
- Subjects
Diagnostic Imaging ,Coronavirus disease 2019 (COVID-19) ,Computer science ,Pneumonia, Viral ,Population ,Health Informatics ,Article ,030218 nuclear medicine & medical imaging ,Task (project management) ,Betacoronavirus ,03 medical and health sciences ,0302 clinical medicine ,Artificial Intelligence ,Health care ,Pandemic ,Humans ,Radiology, Nuclear Medicine and imaging ,National level ,education ,Pandemics ,education.field_of_study ,Radiological and Ultrasound Technology ,SARS-CoV-2 ,business.industry ,imaging ,COVID-19 ,Computer Graphics and Computer-Aided Design ,Engineering management ,Key factors ,Radiology Nuclear Medicine and imaging ,AI ,Position paper ,Computer Vision and Pattern Recognition ,Coronavirus Infections ,business ,Algorithms ,030217 neurology & neurosurgery - Abstract
Highlights • In this position paper, we provide a collection of views on the role of AI in the COVID-19 pandemic, from the clinical needs to the design of AI-based systems, to the translation of the developed tools to the clinic. We highlight key factors in designing system solutions - per specific task; as well as design issues in managing the disease on the national level. We focus on three specific use-cases for which AI systems can be built: from the early disease detection, the management of the disease in a hospital setting, and building patient-specific predictive models that require the combination of imaging with additional clinical features. Infrastructure considerations and population modeling in two European countries will be described. This pandemic has made the practical and scientific challenges of making AI solutions very explicit. A discussion concludes this paper, with a list of challenges facing the community in the AI road ahead., In this position paper, we provide a collection of views on the role of AI in the COVID-19 pandemic, from clinical requirements to the design of AI-based systems, to the translation of the developed tools to the clinic. We highlight key factors in designing system solutions - per specific task; as well as design issues in managing the disease at the national level. We focus on three specific use-cases for which AI systems can be built: early disease detection, management in a hospital setting, and building patient-specific predictive models that require the combination of imaging with additional clinical data. Infrastructure considerations and population modeling in two European countries will be described. This pandemic has made the practical and scientific challenges of making AI solutions very explicit. A discussion concludes this paper, with a list of challenges facing the community in the AI road ahead.
- Published
- 2020
16. AI micro-decisions in FinTechs: a mixed method research design
- Author
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Issa, Helmi, Jabbouri, Rachid, and Mehanna, Rock-Antoine
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- 2023
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17. AI COMPONENTS FOR PERFORMANCE MEASUREMENT - A BIBLIOMETRIC APPROACH.
- Author
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RADU, VALENTIN, CROITORU, IONUT MARIUS, TĂBÎRCĂ, ALINA IULIANA, and STOICA, SILVIU-IONEL
- Subjects
ARTIFICIAL intelligence ,PATENT databases ,BIBLIOMETRICS ,TECHNOLOGICAL innovations ,CONFERENCE papers - Abstract
This study employs a bibliometric approach to analyze the landscape of artificial intelligence (AI) components used in performance measurement. As organizations increasingly leverage AI for optimizing processes and decision-making, understanding the trends in AI components becomes imperative. The identified AI components are classified based on their roles in enhancing performance measurement, offering insights into the prevalent methodologies and emerging technologies. The bibliometric analysis encompasses a comprehensive review of scholarly articles, conference papers, and patents, systematically exploring the evolving field. In this research, the methodology involves data extraction from reputable academic databases and patent repositories, followed by applying bibliometric techniques to quantify and visualize key aspects. The findings of this study contribute to the existing knowledge by mapping the intellectual structure of AI components for performance measurement. [ABSTRACT FROM AUTHOR]
- Published
- 2023
18. An actuarial artificial intelligence for the game rock-paper-scissors
- Author
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Michael B. Jordan
- Subjects
game theory ,AI ,machine learning ,actuarial science ,Science ,Science (General) ,Q1-390 ,Social Sciences ,Social sciences (General) ,H1-99 - Published
- 2018
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19. An actuarial artificial intelligence for the game rock-paper-scissors.
- Author
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Jordan, Michael B.
- Subjects
- *
ACTUARIAL science , *ROCK-paper-scissors (Game) , *HAND games , *RULES of games , *SPORTING rules - Abstract
The article presents the actuarial artificial intelligence in playing the rock-paper-scissors game. Topics discussed include an overview of the rock-paper-scissors game, an outline of its different strategies, the definition of its variables, its basics, the reset of its probabilities, and the flexibility of its probabilities.
- Published
- 2016
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20. AI at the Edge, 2021 EPoSS White Paper
- Author
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Bierzynski, Kay, Calvo Alonso, Daniel, Gandhi, Kaustubh, Lehment, Nicolas, Mayer, Dirk, Nackaerts, Axel, Neul, Reinhard, Peischl, Bernhard, Rix, Nigel, Röhm, Horst, Rzepka, Sven, Seifert, Inessa, Steimetz, Elisabeth, Stree, Bernard, Tedesco, Salvatore, Veledar, Omar, and Wilsch, Benjamin
- Subjects
Smart systems integration ,Artificial Intelligence ,AI ,European smart systems providers ,Edge computing ,Edge AI ,Smart Systems - Abstract
In this paper members of the European Platform on Smart Systems Integration (EPoSS) have collected their views on the benefits of incorporating Artificial Intelligence in future Smart devices and defined the actions required to achieve this to implement "AI at the Edge".
- Published
- 2021
21. A Novel Supply Chain-Based Framework for the Healthcare Industry: A Survey Paper.
- Author
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Satav, Sandip D.
- Subjects
HEALTH care industry ,SUPPLY chains ,SURVEYS ,PATIENT care ,OPERATIONS research - Abstract
In recent years, the healthcare industry has faced numerous challenges in ensuring efficient and reliable supply chain management. The emergence of novel supply chain-based frameworks has presented promising solutions to these challenges. This survey paper aims to explore and analyze the latest advancements in supply chain frameworks specifically tailored for the healthcare industry. We review the existing literature, identify key trends, and highlight the potential impact of these frameworks on improving patient care, optimizing inventory management, enhancing operational efficiency, and reducing costs. Additionally, we discuss the challenges and opportunities associated with the implementation of these frameworks and suggest future research directions. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
22. The Role of ChatGPT, Generative Language Models, and Artificial Intelligence in Medical Education: A Conversation With ChatGPT and a Call for Papers.
- Author
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Eysenbach, Gunther
- Subjects
CHATGPT ,ARTIFICIAL intelligence ,MEDICAL education ,LANGUAGE & languages ,MEDICAL technology - Abstract
ChatGPT is a generative language model tool launched by OpenAI on November 30, 2022, enabling the public to converse with a machine on a broad range of topics. In January 2023, ChatGPT reached over 100 million users, making it the fastest-growing consumer application to date. This interview with ChatGPT is part 2 of a larger interview with ChatGPT. It provides a snapshot of the current capabilities of ChatGPT and illustrates the vast potential for medical education, research, and practice but also hints at current problems and limitations. In this conversation with Gunther Eysenbach, the founder and publisher of JMIR Publications, ChatGPT generated some ideas on how to use chatbots in medical education. It also illustrated its capabilities to generate a virtual patient simulation and quizzes for medical students; critiqued a simulated doctor-patient communication and attempts to summarize a research article (which turned out to be fabricated); commented on methods to detect machine-generated text to ensure academic integrity; generated a curriculum for health professionals to learn about artificial intelligence (AI); and helped to draft a call for papers for a new theme issue to be launched in JMIR Medical Education on ChatGPT. The conversation also highlighted the importance of proper "prompting." Although the language generator does make occasional mistakes, it admits these when challenged. The well-known disturbing tendency of large language models to hallucinate became evident when ChatGPT fabricated references. The interview provides a glimpse into the capabilities and limitations of ChatGPT and the future of AI-supported medical education. Due to the impact of this new technology on medical education, JMIR Medical Education is launching a call for papers for a new e-collection and theme issue. The initial draft of the call for papers was entirely machine generated by ChatGPT, but will be edited by the human guest editors of the theme issue. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
23. Indigenous Protocol and Artificial Intelligence Position Paper
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Artificial Intelligence ,AI ,Indigenous Protocol ,Indigenous Knowledges - Published
- 2020
24. Prace naukowe tworzone przez sztuczną inteligencję. Oszustwo czy szansa.
- Author
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Nalaskowski, Filip
- Abstract
We stand at the threshold of a revolution in science. It is possible that soon scientific writing as we know it will undergo a rapid change, all thanks to the ChatGPT 3.5 language model. The appearance of this tool on the technology market in November 2022 caused a massive stir among Internet users and the academic world. It turned out that chat has the potential to generate completely new and unique scientific texts. In the wake of ChatGPT, similar tools by technology giants came and are coming. Given the above, the scientific community has only a brief moment to try to answer the following questions: whether the texts generated in this way have real scientific value, whether it is ethical for researchers to use them, how to regulate copyright on the use of AI, what are the potential capabilities of artificial intelligence for writing scientific papers. The indicated themes are reflected in the presented text. [ABSTRACT FROM AUTHOR]
- Published
- 2023
25. GenAI et al.: Cocreation, Authorship, Ownership, Academic Ethics and Integrity in a Time of Generative AI.
- Author
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Bozkurt, Aras
- Subjects
GENERATIVE artificial intelligence ,EDUCATION ethics ,INTEGRITY ,HONESTY ,LANGUAGE models ,GENERATIVE pre-trained transformers ,NATURAL language processing - Abstract
This paper investigates the complex interplay between generative artificial intelligence (AI) and human intellect in academic writing and publishing. It examines the 'organic versus synthetic' paradox, emphasizing the implications of using generative AI tools in educational and academic integrity contexts. The paper critiques the prevalent 'publish or perish' culture in academia, highlighting the need for systemic reevaluation due to generative AI's emerging role in academic writing and reporting. It delves into the legal and ethical challenges of authorship and ownership, especially in relation to copyright laws and AI-generated content. The paper discusses generative AI's diverse roles and advocates for transparent reporting to uphold academic integrity. Additionally, it calls for a broader examination of generative AI tools and stresses the need for new mechanisms to identify generative AI use and ensure adherence to academic integrity and ethics. The implications of generative AI are also explored, suggesting the need for innovative AI-inclusive strategies in academia. The paper concludes by emphasizing the significance of generative AI in various information-processing domains, highlighting the urgency to adapt and transform academic practices in an era of rapid generative AI-driven change. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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26. A Critical Perspective Over Whether and How to Acknowledge the Use of Artificial Intelligence (AI) in Qualitative Studies.
- Author
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Christou, Prokopis A.
- Subjects
ARTIFICIAL intelligence ,CRITICAL analysis ,QUALITATIVE research ,EDUCATION ethics ,COGNITIVE development - Abstract
There has been a rise in scepticism regarding the use of Artificial Intelligence (AI) in qualitative research tasks such as critical reviews, conceptualization, thematic and content analysis, and potentially theory development. Concerns have been raised over the possibility that researchers intentionally avoid discussing or even mentioning the use of AI in their studies for a variety of reasons, including the "fear" of criticism and rejection of their papers. The purpose of this paper, which is guided by critical perspective principles, is to examine the controversy surrounding the appropriate recognition of AI in theoretical discussions and qualitative research, including conceptual, critical reviews, empirical, and other types of studies of qualitative nature. Prior to a discussion of how to acknowledge the use of AI, the significance of notions of acknowledgment and academic integrity in the context of research are discussed. As the author of this paper, I acknowledge and document the use of both AI and the researcher's cognitive skills in the development of this theoretical critical perspective study through a four-phase process, while giving directions of when and how to acknowledge the use of AI in qualitative studies. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
27. Artificial Intelligence and Sustainability—A Review.
- Author
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Dhiman, Rachit, Miteff, Sofia, Wang, Yuancheng, Ma, Shih-Chi, Amirikas, Ramila, and Fabian, Benjamin
- Subjects
ARTIFICIAL intelligence ,SUSTAINABILITY ,ENERGY consumption ,STAKEHOLDERS - Abstract
In recent decades, artificial intelligence has undergone transformative advancements, reshaping diverse sectors such as healthcare, transport, agriculture, energy, and the media. Despite the enthusiasm surrounding AI's potential, concerns persist about its potential negative impacts, including substantial energy consumption and ethical challenges. This paper critically reviews the evolving landscape of AI sustainability, addressing economic, social, and environmental dimensions. The literature is systematically categorized into "Sustainability of AI" and "AI for Sustainability", revealing a balanced perspective between the two. The study also identifies a notable trend towards holistic approaches, with a surge in publications and empirical studies since 2019, signaling the field's maturity. Future research directions emphasize delving into the relatively under-explored economic dimension, aligning with the United Nations' Sustainable Development Goals (SDGs), and addressing stakeholders' influence. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
28. Gender bias perpetuation and mitigation in AI technologies: challenges and opportunities.
- Author
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O'Connor, Sinead and Liu, Helen
- Subjects
ARTIFICIAL intelligence ,SEX discrimination ,GENDER studies ,PUBLIC sector ,GOVERNMENT policy - Abstract
Across the world, artificial intelligence (AI) technologies are being more widely employed in public sector decision-making and processes as a supposedly neutral and an efficient method for optimizing delivery of services. However, the deployment of these technologies has also prompted investigation into the potentially unanticipated consequences of their introduction, to both positive and negative ends. This paper chooses to focus specifically on the relationship between gender bias and AI, exploring claims of the neutrality of such technologies and how its understanding of bias could influence policy and outcomes. Building on a rich seam of literature from both technological and sociological fields, this article constructs an original framework through which to analyse both the perpetuation and mitigation of gender biases, choosing to categorize AI technologies based on whether their input is text or images. Through the close analysis and pairing of four case studies, the paper thus unites two often disparate approaches to the investigation of bias in technology, revealing the large and varied potential for AI to echo and even amplify existing human bias, while acknowledging the important role AI itself can play in reducing or reversing these effects. The conclusion calls for further collaboration between scholars from the worlds of technology, gender studies and public policy in fully exploring algorithmic accountability as well as in accurately and transparently exploring the potential consequences of the introduction of AI technologies. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
29. Artificial Intelligence's Development and Challenges in Scientific Writing.
- Author
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Abd-Elsalam, Kamel A. and Abdel-Momen, Salah M.
- Subjects
ARTIFICIAL intelligence ,TECHNICAL writing ,CHATGPT ,LANGUAGE models ,WRITING processes - Abstract
As a help to researchers for organizing their thoughts and providing data-driven outcomes, Artificial Intelligence (AI) has the potential to develop scientific writing. AI-powered technologies have been created by businesses like Semantic Scholar and Paper Digest to scan scientific texts and extract pertinent data. By expediting the publishing process and enabling academics to concentrate more on their own work, AI-based writing tools like GPT-3 can produce high-quality papers that closely resemble those of well-known authors. These tools can help with idea organization, creating rough drafts, and enhancing the general caliber of scientific work. For instance, ChatGPT is a useful tool in research and publishing since it may help scientists with material arrangement, draft generation, and proofreading. The drawbacks of AI must be understood, as well as the difficulties posed by prejudice, ethical issues, and the requirement for human innovation. We can improve the scientific writing process and increase scientific research by utilizing AI's potential while adding human knowledge. But there is still room for development, and it is essential to guarantee openness, morality, and reliability in AI-driven technology for academic study. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
30. Computer-generated influencers: the rise of digital personalities
- Author
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Mrad, Mona, Ramadan, Zahy, and Nasr, Lina Issam
- Published
- 2022
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31. actuarial artificial intelligence for the game rock-paper-scissors
- Author
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Michael B. Jordan
- Subjects
game theory ,Matching (statistics) ,Fist ,Computer science ,media_common.quotation_subject ,GeneralLiterature_MISCELLANEOUS ,General Biochemistry, Genetics and Molecular Biology ,lcsh:Social Sciences ,Simple (abstract algebra) ,lcsh:Social sciences (General) ,lcsh:Science ,lcsh:Science (General) ,media_common ,Actuarial science ,actuarial science ,business.industry ,Index (typography) ,ComputingMilieux_PERSONALCOMPUTING ,Certainty ,lcsh:H ,machine learning ,AI ,General Earth and Planetary Sciences ,lcsh:Q ,lcsh:H1-99 ,Artificial intelligence ,Element (category theory) ,General Agricultural and Biological Sciences ,business ,Game theory ,lcsh:Q1-390 ,Gesture - Abstract
Rock-paper-scissors is a simple game played by two players who use hand gestures that resemble a 'rock' (a fist), a piece of 'paper' (a flat hand) or a pair of 'scissors' (index and middle fingers in the shape of a V). Each player plays a gesture at the same time, with the scoring as follows: 'rock' beats 'scissors'; 'paper' beats 'rock'; and 'scissors' beats 'paper'. If the game is played only once, no dominating strategy exists and the result is down to chance. If the game is played multiple times the chance element reduces as a player's next gesture is influenced by two factors: the previous result (win, loss or draw) and the previous gesture ('rock', 'paper' or 'scissors'). Previous attempts by RoShamBot to create an artificial intelligence (or AI) for rock-paper-scissors have relied on simple frequency analysis (i.e. the user has played 'rock' the most, therefore the AI must play 'paper' next) or history matching (i.e. the AI matching the last four rounds to a large database of previous games and determining what gesture the user will play next and then countering that gesture). In an actuarial spirit, I take a stochastic approach and instead of determining the next gesture with certainty, I flex the probabilities for 'rock', 'paper' and 'scissors' and then let my AI randomly choose one. The probabilities are flexed based on previous results and previous gestures.
- Published
- 2018
32. Digital art work and AI: a new paradigm for work in the contemporary art sector in China.
- Author
-
Duester, Emma
- Subjects
COMPUTER art ,CREATIVE ability ,ARTIFICIAL intelligence ,ART ,MUSEUM directors - Abstract
This paper explores a paradigm shift in work culture in the contemporary art sector due to digital transition and the introduction of AI. New ways of working with AI and digital software are embedded and normalized in everyday Chinese artistic practices. This work includes new forms of creativity and efficiency, yet, simultaneously includes new types of digital labour. This paper conceptualizes this as "digital art work," which draws attention to the often-overlooked aspects of artists' work, particularly their everyday artistic practices that increasingly include digital software and AI. What is the role and position of the artist in an environment where digital software and AI are becoming more central in artistic creation? How do artists creatively (mis)use AI? What does this paradigm shift in work culture mean for the future of the artist's role and the future of the contemporary art sector? This paper draws on 48 semi-structured interviews with visual artists and arts professionals, including painters, sculptors, mixedmedia, and internet artists as well as contemporary art gallery owners, museum project directors, curators, and culture policymakers living and working in China during 2023. The findings show how Chinese artists are mastering AI and opening up new spaces for creativity and how the contemporary art sector in China has already transitioned to a new "digital way" in artistic creation. These findings can help to create policy around AI globally and provide solutions for the sustainability of the artist profession and the future of the contemporary art sector. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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33. Auditor judgment in the fourth industrial revolution.
- Author
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Samiolo, Rita, Spence, Crawford, and Toh, Dorothy
- Subjects
AUDITORS ,INDUSTRY 4.0 ,TECHNOLOGICAL innovations ,ARTIFICIAL intelligence - Abstract
Copyright of Contemporary Accounting Research is the property of Canadian Academic Accounting Association 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
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34. Understanding Users' Acceptance of Artificial Intelligence Applications: A Literature Review.
- Author
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Jiang, Pengtao, Niu, Wanshu, Wang, Qiaoli, Yuan, Ruizhi, and Chen, Keyu
- Subjects
LITERATURE reviews ,ARTIFICIAL intelligence ,INFORMATION storage & retrieval systems ,SCHOLARS - Abstract
In recent years, with the continuous expansion of artificial intelligence (AI) application forms and fields, users' acceptance of AI applications has attracted increasing attention from scholars and business practitioners. Although extant studies have extensively explored user acceptance of different AI applications, there is still a lack of understanding of the roles played by different AI applications in human–AI interaction, which may limit the understanding of inconsistent findings about user acceptance of AI. This study addresses this issue by conducting a systematic literature review on AI acceptance research in leading journals of Information Systems and Marketing disciplines from 2020 to 2023. Based on a review of 80 papers, this study made contributions by (i) providing an overview of methodologies and theoretical frameworks utilized in AI acceptance research; (ii) summarizing the key factors, potential mechanisms, and theorization of users' acceptance response to AI service providers and AI task substitutes, respectively; and (iii) proposing opinions on the limitations of extant research and providing guidance for future research. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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35. RESEARCH ON AUTOMATIC UNATTENDED BILL COLLECTION, PASTE AND VERIFICTION INTEGRATED ROBOT EQUIPMENT AND CONTROL PLATFORM BASED ON DEEP CONVOLUTIONAL NEURAL NETWORK.
- Author
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CHAO WANG, XI CHEN, and YING WANG
- Subjects
CONVOLUTIONAL neural networks ,COLLECTING of accounts ,ROBOT control systems ,COMPUTER vision ,DEEP learning ,AUTOMATIC identification - Abstract
A new solution for fully automated and unmanned ticket pasting verification based on deep convolutional neural networks is designed to address the issues of low efficiency, error-proneness, and wastage of manpower in the supplier service hall. The technology makes full use of machine vision and image processing, AI precise positioning correction algorithm and other methods to build an automatic unattended bill collection, paste and verification platform. Through the technologies of high-speed identification of invoice information, 3D vision-guidance planning, control of the path of robotic arm, detection of invoice pasting and repeating based on ultrasonic sensors, and tidal temporary storage of paper invoices, and so on, the automatic high-speed identification and inspection of bills in the supplier service hall are realized, and the efficiency and accuracy of bill processing in the supplier hall are improved. Experiments show that this research method reinforces ability of identification calibration and order correlation, and improves the efficiency of Invoice filing. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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36. Use of machine learning technology for tourist and organizational services: high-tech innovation in the hospitality industry
- Author
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Parvez, M. Omar
- Published
- 2021
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37. The Potential of AI-Driven Assistants in Scaled Agile Software Development.
- Author
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Saklamaeva, Vasilka and Pavlič, Luka
- Subjects
AGILE software development ,SOFTWARE engineering ,ARTIFICIAL intelligence ,COMPUTER software development - Abstract
Scaled agile development approaches are now used widely in modern software engineering, allowing businesses to improve teamwork, productivity, and product quality. The incorporation of artificial intelligence (AI) into scaled agile development methods (SADMs) has emerged as a potential strategy in response to the ongoing demand for simplified procedures and the increasing complexity of software projects. This paper explores the intersection of AI-driven assistants within the context of the scaled agile framework (SAFe) for large-scale software development, as it stands out as the most widely adopted framework. Our paper pursues three principal objectives: (1) an evaluation of the challenges and impediments encountered by organizations during the implementation of SADMs, (2) an assessment of the potential advantages stemming from the incorporation of AI in large-scale contexts, and (3) the compilation of aspects of SADMs that AI-driven assistants enhance. Through a comprehensive systematic literature review, we identified and described 18 distinct challenges that organizations confront. In the course of our research, we pinpointed seven benefits and five challenges associated with the implementation of AI in SADMs. These findings were systematically categorized based on their occurrence either within the development phase or the phases encompassing planning and control. Furthermore, we compiled a list of 15 different AI-driven assistants and tools, subjecting them to a more detailed examination, and employing them to address the challenges we uncovered during our research. One of the key takeaways from this paper is the exceptional versatility and effectiveness of AI-driven assistants, demonstrating their capability to tackle a broader spectrum of problems. In conclusion, this paper not only sheds light on the transformative potential of AI, but also provides invaluable insights for organizations aiming to enhance their agility and management capabilities. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
38. AI in Gravitational Wave Analysis, an Overview.
- Author
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Benedetto, Vincenzo, Gissi, Francesco, Ciaparrone, Gioele, and Troiano, Luigi
- Subjects
DEEP learning ,GRAVITATIONAL waves ,WAVE analysis ,BINARY black holes ,ARTIFICIAL intelligence ,SOFTWARE frameworks - Abstract
Gravitational wave research presents a range of intriguing challenges, each of which has driven significant progress in the field. Key research problems include glitch classification, glitch cancellation, gravitational wave denoising, binary black hole signal detection, gravitational wave bursts, and minor issues that contribute to the overall understanding of gravitational wave phenomena. This paper explores the applications of artificial intelligence, deep learning, and machine learning techniques in addressing these challenges. The main goal of the paper is to provide an effective view of AI and deep learning usage for gravitational wave analysis. Thanks to the advancements in artificial intelligence and machine learning techniques, aided by GPUs and specialized software frameworks, these techniques have played a key role over the last decade in the identification, classification, and cancellation of gravitational wave signals, as presented in our results. This paper provides a comprehensive exploration of the adoption rate of these techniques, with reference to the software and hardware involved, their effectiveness, and potential limitations, offering insights into the advancements in the analysis of gravitational wave data. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
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39. A Cross-Era Discourse on ChatGPT's Influence in Higher Education through the Lens of John Dewey and Benjamin Bloom.
- Author
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Mandai, Koki, Tan, Mark Jun Hao, Padhi, Suman, and Pang, Kuin Tian
- Subjects
CHATGPT ,BLOOM'S taxonomy ,HIGHER education ,EDUCATION theory ,PHILOSOPHY of education - Abstract
Since its release in November 2022, ChatGPT and the related AI technology have disrupted multiple fields of society where people anticipate its pathways with a mixture of hope and fear. Among the affected fields, education, in particular, may incur one of the largest impacts in the future partly due to its nature of learning and teaching knowledge, an element that is more or less questioned by the rise of these technologies. As education can be seen as a component that determines the future of every other field of society, tools such as ChatGPT must be optimally regulated to enhance its gain or mitigate its loss. To contribute to this goal, this paper approaches the state of ChatGPT and its expected impacts on higher education through the lens of two major educational theories—John Dewey's Reflective-Thought-and-Action model and revised Bloom's taxonomy—aiming to propose possible evaluative criteria for the optimal usage of ChatGPT in academia. As ChatGPT is a relatively new topic of research yet a topic that requires an immediate focus due to its capabilities, this paper also aims to provide these criteria as one of the concrete starting points of future research in this field. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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40. INTEGRATING ARTIFICIAL INTELLIGENCE INTO THE PHOTOGRAPHIC DESIGN PROCESS.
- Author
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ENACHE, Ioana Catalina, VALTER, Narcisa Elena, RADUICA, Florin Felix, and CHIVU, Oana Roxana
- Subjects
ARTIFICIAL intelligence ,MACHINE learning ,AUTOMATIC identification ,PHOTOGRAPHIC editing ,PHOTOGRAPHY industry - Abstract
This paper explores the impact of using Artificial Intelligence (AI) in the photographic design process. In the context of rapidly evolving technology, AI applications have become increasingly prominent in various fields, including the photographic industry. This study examines how advanced machine learning and image processing algorithms can improve and simplify creative processes in photography. The main issues addressed include the use of AI in automatic image selection and editing, automatic identification of relevant subjects and generation of artistic effects. These technologies bring not only efficiency but also an increase in the quality of the final results. The paper also highlights the ethical issues associated with the use of AI in photographic design and the importance of human control in these automated processes. The study draws on current research in AI and photography, examining practical applications of existing technologies and exploring future prospects. The results indicate that the intelligent integration of AI into the photographic design process can bring significant benefits, but it is essential to consider ethical issues and maintain a balance between human creativity and automation. [ABSTRACT FROM AUTHOR]
- Published
- 2024
41. Leveraging Visualization and Machine Learning Techniques in Education: A Case Study of K-12 State Assessment Data.
- Author
-
Taylor, Loni, Gupta, Vibhuti, and Jung, Kwanghee
- Subjects
DATA-based decision making in education ,ARTIFICIAL intelligence ,DATA visualization ,MACHINE learning ,MICROSOFT Azure (Computing platform) ,INDIVIDUALIZED instruction - Abstract
As data-driven models gain importance in driving decisions and processes, recently, it has become increasingly important to visualize the data with both speed and accuracy. A massive volume of data is presently generated in the educational sphere from various learning platforms, tools, and institutions. The visual analytics of educational big data has the capability to improve student learning, develop strategies for personalized learning, and improve faculty productivity. However, there are limited advancements in the education domain for data-driven decision making leveraging the recent advancements in the field of machine learning. Some of the recent tools such as Tableau, Power BI, Microsoft Azure suite, Sisense, etc., leverage artificial intelligence and machine learning techniques to visualize data and generate insights from them; however, their applicability in educational advances is limited. This paper focuses on leveraging machine learning and visualization techniques to demonstrate their utility through a practical implementation using K-12 state assessment data compiled from the institutional websites of the States of Texas and Louisiana. Effective modeling and predictive analytics are the focus of the sample use case presented in this research. Our approach demonstrates the applicability of web technology in conjunction with machine learning to provide a cost-effective and timely solution to visualize and analyze big educational data. Additionally, ad hoc visualization provides contextual analysis in areas of concern for education agencies (EAs). [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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42. NATIONAL REPORT ON AUTOMATION IN DECISION-MAKING IN CIVIL PROCEDURE IN THE CZECH REPUBLIC.
- Author
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SEDLÁČEK, MIROSLAV
- Abstract
The paper focuses on the issue of automated decision-making in civil proceedings. First of all, attention is given to procedural institutes that direct and facilitate automated decision-making, in particular the digital court file and the legal framework of videoconferencing equipment, without focusing on electronic service of documents, which should be a separate paper. A single case of legal regulation of automated decision-making in the form of an electronic payment order is then analyzed (cf. Section 174a of the Code of Civil Procedure). For each of these fields, an analysis of digitalization to date is given, which is followed by a consideration of further developments. It also outlines the limits encountered by the use of modern technologies and the potential risks proposed adjustments. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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43. Systematic Review of Cashierless Stores (Just Walk Out Stores) Revolutionizing The Retail.
- Author
-
Szabó-Szentgróti, Eszter, Rámháp, Szabolcs, and Kézai, Petra Kinga
- Subjects
TECHNOLOGICAL innovations ,NEW business enterprises ,CONSUMERS ,DATABASES ,DIGITAL technology ,SMART cities ,BACKGROUND checks - Abstract
The paper aims to examine the evolving retail sector in recent years, specifically how digitalisation and technological innovations have transformed it. All actors have had to adapt to remain competitive. Notably, a new innovation in the retail sector, namely the checkout-free or cashierless store, emerged in 2018. Systematic literature is relied upon to achieve the study's objectives. The significance of this study lies in the use of multiple IT tools such as AI, cameras, sensors, and self-organising shelves to replace human intervention in the retail sector. Globally, several startup companies have developed this new unmanned solution, and Amazon Go stands out as one of the most well-known among them. The primary objective of this pioneering concept is to enhance efficiency by saving time and reducing queues. The aim is to enable customers to enter and exit the store with minimal human contact as quickly as possible. This paper presents the recent trend of the cashierless concept, its evolution, and proliferation. A systematic literature review and data analysis from the Crunchbase Database were conducted. The findings demonstrate that this recent concept is altering both consumers' purchasing behaviours and companies' business models. This paper provides novel perspectives and insights into the wider literature on cashierless concepts and smart retail in the context of digital business. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
44. An AI-Enhanced Strategy of Service Offloading for IoV in Mobile Edge Computing.
- Author
-
Peng, Hongyu, Zhang, Xiaosong, Li, Hongwu, Xu, Lexi, and Wang, Xiaodong
- Subjects
MOBILE computing ,EDGE computing ,ARTIFICIAL intelligence ,CONVOLUTIONAL neural networks ,REMOTE computing ,QUALITY of service - Abstract
A full connected world is expected to be introduced in the sixth generation mobile network (6G). As a typical fully connected scenario, the internet of vehicle (IoV) enables intelligent vehicle operations via artificial intelligence (AI) and edge computing technologies. Thus, integrating intelligence into edge computing is, no doubt, a promising development trend. In the future of vehicular networks, a massive variety of services need powerful computing resources and higher quality of service (QoS). Existing computing resources are insufficient to match those increasing requirements. Most works on this problem focused on finding the power-delay's trade-off, ignoring QoS and stable load balance. In this study, we found that the computing power and redundancy of vehicles' in IoV is increasing. So, those redundant computing resources are possible to be used to solve the shortage of computing resource. CNN is a typical AI technique. This technology is very suitable for solving the problems in this article. So, we adopted CNN technique of AI to design and algorithm of convolutional long short-term memory (CN_LSTM) based traffic prediction (ACLBTP). ACLBTP was designed to gain the predicted number of vehicles belonging to the edge node. Secondly, according to the problem of insufficient computing resources on remote servers, we found that a large amount of redundant computing resources exist in edge nodes. So, we used edge computing technique to solve the problem of insufficient computing resources on remote servers. ASOBCL was designed to distribute computing tasks to edge nodes. Meanwhile, an intelligent service offloading framework was provided in this article. Based on the framework, an algorithm of improved gradient descent (AIGD) was created to accelerate the speed of iteration. So, the ACLBTP's convergence of convolutional neural network (CNN) based on AIGD was able to be accelerated too. In ASOBCL, a sorting technique was adopted to speed up the offloading work. Simulation results demonstrated the fact that the prediction strategy designed in this paper had high accuracy. The low offloading time and maintaining stable load balance were gained via running ASOBCL. Low offloading time means short response time. Additionally, the QoS was guaranteed. So, these strategies designed in this paper were effective and valuable. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
45. Hey Alexa, why are you called intelligent? An empirical investigation on definitions of AI.
- Author
-
Caluori, Lucas
- Subjects
ARTIFICIAL intelligence ,LEARNING ability ,CONTENT analysis ,INDEPENDENT variables ,STATISTICAL sampling ,METADATA - Abstract
This paper seeks to examine the questions of what criteria definitions of Artificial Intelligence (AI) use to define AI, what the disagreements that revolve around the term AI are based on, and what correlations can be drawn to other parameters. Framed as a problem of classification, a random sample of 45 definitions from various text sources was subjected to a qualitative content analysis. The criteria found are concluded in five dimensions, namely (1) learning ability, (2) human likeness, (3) state of "mind", (4) complexity of the problem, and (5) successfulness. Further, the results support the view that there is no consensus neither on which of these criteria are crucial to define AI nor on how these criteria must be fulfilled. By opposing the frequencies of the dimensions found with the metadata collected, it can be seen that most of these, e.g., country, scientific field, or gender of the author, are statistically independent of content variables, while the medium in which the definition was published shows a strong correlation. Since different mediums target different purposes and different readers, it must be taken into account that writing a definition of AI is to be seen in the context of its distribution area and its goal. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
46. Moral distance, AI, and the ethics of care.
- Author
-
Villegas-Galaviz, Carolina and Martin, Kirsten
- Subjects
ARTIFICIAL intelligence ,DECISION making ,ETHICS - Abstract
This paper investigates how the introduction of AI to decision making increases moral distance and recommends the ethics of care to augment the ethical examination of AI decision making. With AI decision making, face-to-face interactions are minimized, and decisions are part of a more opaque process that humans do not always understand. Within decision-making research, the concept of moral distance is used to explain why individuals behave unethically towards those who are not seen. Moral distance abstracts those who are impacted by the decision and leads to less ethical decisions. The goal of this paper is to identify and analyze the moral distance created by AI through both proximity distance (in space, time, and culture) and bureaucratic distance (derived from hierarchy, complex processes, and principlism). We then propose the ethics of care as a moral framework to analyze the moral implications of AI. The ethics of care brings to the forefront circumstances and context, interdependence, and vulnerability in analyzing algorithmic decision making. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
47. A Platform for Integrating Internet of Things, Machine Learning, and Big Data Practicum in Electrical Engineering Curricula.
- Author
-
Jayachandran, Nandana, Abdrabou, Atef, Yamane, Naod, and Al-Dulaimi, Anwer
- Subjects
ENGINEERING students ,MACHINE learning ,ENGINEERING education ,GRAPHICAL user interfaces ,ENGINEERING design - Abstract
The integration of the Internet of Things (IoT), big data, and machine learning (ML) has pioneered a transformation across several fields. Equipping electrical engineering students to remain abreast of the dynamic technological landscape is vital. This underscores the necessity for an educational tool that can be integrated into electrical engineering curricula to offer a practical way of learning the concepts and the integration of IoT, big data, and ML. Thus, this paper offers the IoT-Edu-ML-Stream open-source platform, a graphical user interface (GUI)-based emulation software tool to help electrical engineering students design and emulate IoT-based use cases with big data analytics. The tool supports the emulation or the actual connectivity of a large number of IoT devices. The emulated devices can generate realistic correlated IoT data and stream it via the message queuing telemetry transport (MQTT) protocol to a big data platform. The tool allows students to design ML models with different algorithms for their chosen use cases and train them for decision-making based on the streamed data. Moreover, the paper proposes learning outcomes to be targeted when integrating the tool into an electrical engineering curriculum. The tool is evaluated using a comprehensive survey. The survey results show that the students gained significant knowledge about IoT concepts after using the tool, even though many of them already had prior knowledge of IoT. The results also indicate that the tool noticeably improved the students' practical skills in designing real-world use cases and helped them understand fundamental machine learning analytics with an intuitive user interface. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
48. An Action Research Approach to Building an Enterprise-Specific Chatbot (ESCB).
- Author
-
Wood, Zach and Stoker, Geoff
- Subjects
ACTION research ,CHATBOTS ,NATURAL language processing ,ARTIFICIAL intelligence ,LANGUAGE models - Abstract
Organizations are increasingly turning to chatbots to provide customer support via computer-generated, conversational, natural language answers to human queries. This paper describes a technique for creating an enterprise-specific chatbot (ESCB). We conducted an action research study to investigate the possibility of creating an ESCB with a local policy document knowledge base using readily available software tools, a basic level of programming competence, and user community feedback. The applied research on this chatbot leverages the power of Artificial Intelligence (AI), Natural Language Processing (NLP), and proprietary local data to transcend the typical limitations of conventional chatbots. Utilizing three quick-turn action research cycles, we evolved the chatbot to demonstrate high accuracy and relevance in its responses. The results indicate that our chatbot is becoming increasingly efficient in interpreting user queries, extracting necessary information, and formulating appropriate responses. The work underscores the significant potential of AI-powered chatbots for data interaction and the affordability of AI implementation, paving the way for organizations with limited resources to leverage the power of AI in their local operations. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
49. ChatGPT in the Classroom: A Practical Guide for Educators.
- Author
-
Sang-A Lee, Welch, Jacob, Wallace, Ryan J., Cross, David, and Loffi, Jon M.
- Subjects
CHATGPT ,LANGUAGE models ,ARTIFICIAL intelligence ,BLOOM'S taxonomy ,EDUCATORS - Abstract
This paper explores the potential applications of ChatGPT, a powerful Artificial Intelligence (AI) large language model (LLM) developed by OpenAI, for aviation education applications. The authors provide an overview of ChatGPT and its unique features, such as accessibility, conversational abilities, and personalized learning capabilities. The scalability of ChatGPT allows individualized and personalized instruction, a revolutionary aspect that can potentially enhance the student learning experience. This applied research employed an exploratory design to investigate ChatGPT's potential applications to enhance learning at varied levels of learning. The study investigated four research questions: (1) How can ChatGPT be used by students to support learning at each stage of Bloom's Taxonomy?; (2) How can teachers use ChatGPT to enhance student engagement in the learning process at each stage of Bloom's Taxonomy?; (3) What are the potential risks related to using ChatGPT as an educational resource?; and (4) What student guidelines or policies should be in place regarding the use of ChatGPT for learning? The authors provide specific recommendations for entering ChatGPT queries, along with practical application samples that have been tested using the platform. Generalized guidance and policy for the educational use of ChatGPT is also provided. The findings of this project prepare instructors to apply AI LLM resources to enhance aviation education and provide recommendations for its effective and ethical use by both faculty and students. Overall, this paper equips aviation educators with the necessary knowledge to leverage the power of ChatGPT to improve instructional outcomes. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
50. Towards Improved XAI-Based Epidemiological Research into the Next Potential Pandemic.
- Author
-
Khalili, Hamed and Wimmer, Maria A.
- Subjects
MACHINE learning ,EVIDENCE gaps ,DEEP learning ,COVID-19 pandemic ,ARTIFICIAL intelligence - Abstract
By applying AI techniques to a variety of pandemic-relevant data, artificial intelligence (AI) has substantially supported the control of the spread of the SARS-CoV-2 virus. Along with this, epidemiological machine learning studies of SARS-CoV-2 have been frequently published. While these models can be perceived as precise and policy-relevant to guide governments towards optimal containment policies, their black box nature can hamper building trust and relying confidently on the prescriptions proposed. This paper focuses on interpretable AI-based epidemiological models in the context of the recent SARS-CoV-2 pandemic. We systematically review existing studies, which jointly incorporate AI, SARS-CoV-2 epidemiology, and explainable AI approaches (XAI). First, we propose a conceptual framework by synthesizing the main methodological features of the existing AI pipelines of SARS-CoV-2. Upon the proposed conceptual framework and by analyzing the selected epidemiological studies, we reflect on current research gaps in epidemiological AI toolboxes and how to fill these gaps to generate enhanced policy support in the next potential pandemic. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
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