Results for 'COVID-19 Artificial intelligence Machine learning Neutrosophic techniques Computer-aided diagnostic tool'

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  1.  8
    Proceedings of the 1986 Conference on Theoretical Aspects of Reasoning about Knowledge: March 19-22, 1988, Monterey, California.Joseph Y. Halpern, International Business Machines Corporation, American Association of Artificial Intelligence, United States & Association for Computing Machinery - 1986
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  2.  13
    E-Learning Research Trends in Higher Education in Light of COVID-19: A Bibliometric Analysis.Said Khalfa Mokhtar Brika, Khalil Chergui, Abdelmageed Algamdi, Adam Ahmed Musa & Rabia Zouaghi - 2022 - Frontiers in Psychology 12.
    This paper provides a broad bibliometric overview of the important conceptual advances that have been published during COVID-19 within “e-learning in higher education.” E-learning as a concept has been widely used in the academic and professional communities and has been approved as an educational approach during COVID-19. This article starts with a literature review of e-learning. Diverse subjects have appeared on the topic of e-learning, which is indicative of the dynamic and multidisciplinary nature of (...)
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  3.  14
    Artificial intelligence, public control, and supply of a vital commodity like COVID-19 vaccine.Vladimir Tsyganov - 2023 - AI and Society 38 (6):2619-2628.
    The article examines the problem of ensuring the political stability of a democratic social system with a shortage of a vital commodity (like vaccine against COVID-19). In such a system, members of society citizens assess the authorities. Thus, actions by the authorities to increase the supply of this commodity can contribute to citizens' approval and hence political stability. However, this supply is influenced by random factors, the actions of competitors, etc. Therefore, citizens do not have sufficient information about all (...)
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  4.  15
    Transfer Learning and Semisupervised Adversarial Detection and Classification of COVID-19 in CT Images.Ariyo Oluwasanmi, Muhammad Umar Aftab, Zhiguang Qin, Son Tung Ngo, Thang Van Doan, Son Ba Nguyen & Son Hoang Nguyen - 2021 - Complexity 2021:1-11.
    The ongoing coronavirus 2019 pandemic caused by the severe acute respiratory syndrome coronavirus 2 has resulted in a severe ramification on the global healthcare system, principally because of its easy transmission and the extended period of the virus survival on contaminated surfaces. With the advances in computer-aided diagnosis and artificial intelligence, this paper presents the application of deep learning and adversarial network for the automatic identification of COVID-19 pneumonia in computed tomography scans of the (...)
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  5.  77
    Identification of efficient COVID-19 diagnostic test through artificial neural networks approach − substantiated by modeling and simulation.Rabia Afrasiab, Asma Talib Qureshi, Fariha Imtiaz, Syed Fasih Ali Gardazi & Mustafa Kamal Pasha - 2021 - Journal of Intelligent Systems 30 (1):836-854.
    Soon after the first COVID-19 positive case was detected in Wuhan, China, the virus spread around the globe, and in no time, it was declared as a global pandemic by the WHO. Testing, which is the first step in identifying and diagnosing COVID-19, became the first need of the masses. Therefore, testing kits for COVID-19 were manufactured for efficiently detecting COVID-19. However, due to limited resources in the densely populated countries, testing capacity even after a year (...)
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  6.  14
    Ethical Considerations in the Application of Artificial Intelligence to Monitor Social Media for COVID-19 Data.Lidia Flores & Sean D. Young - 2022 - Minds and Machines 32 (4):759-768.
    The COVID-19 pandemic and its related policies (e.g., stay at home and social distancing orders) have increased people’s use of digital technology, such as social media. Researchers have, in turn, utilized artificial intelligence to analyze social media data for public health surveillance. For example, through machine learning and natural language processing, they have monitored social media data to examine public knowledge and behavior. This paper explores the ethical considerations of using artificial intelligence to (...)
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  7. Artificial Intelligence and Black‐Box Medical Decisions: Accuracy versus Explainability.Alex John London - 2019 - Hastings Center Report 49 (1):15-21.
    Although decision‐making algorithms are not new to medicine, the availability of vast stores of medical data, gains in computing power, and breakthroughs in machine learning are accelerating the pace of their development, expanding the range of questions they can address, and increasing their predictive power. In many cases, however, the most powerful machine learning techniques purchase diagnostic or predictive accuracy at the expense of our ability to access “the knowledge within the machine.” Without (...)
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  8.  49
    Online education empowerment with artificial intelligence tools.Boichenko A. V. & Boichenko O. A. - 2020 - Artificial Intelligence Scientific Journal 25 (2):22-29.
    The experience of organizing the educational process during the quarantine caused by the COVID-19 pandemic is considered. Using of interactive technologies that allow organizing instant audio communication with a remote audience, as well as intelligent tools based on artificial intelligence that can help educational institutions to work more efficiently. Examples of sufficient use of artificial intelligence in distance learning are given. Particular attention is paid to the development of intelligent chatbots intended for use in (...)
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  9.  16
    Machine learning and its impact on psychiatric nosology: Findings from a qualitative study among German and Swiss experts.Georg Starke, Bernice Simone Elger & Eva De Clercq - 2023 - Philosophy and the Mind Sciences 4.
    The increasing integration of Machine Learning (ML) techniques into clinical care, driven in particular by Deep Learning (DL) using Artificial Neural Nets (ANNs), promises to reshape medical practice on various levels and across multiple medical fields. Much recent literature examines the ethical consequences of employing ML within medical and psychiatric practice but the potential impact on psychiatric diagnostic systems has so far not been well-developed. In this article, we aim to explore the challenges that (...)
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  10.  44
    Artificial intelligence vs COVID-19: limitations, constraints and pitfalls.Wim Naudé - 2020 - AI and Society 35 (3):761-765.
    This paper provides an early evaluation of Artificial Intelligence against COVID-19. The main areas where AI can contribute to the fight against COVID-19 are discussed. It is concluded that AI has not yet been impactful against COVID-19. Its use is hampered by a lack of data, and by too much data. Overcoming these constraints will require a careful balance between data privacy and public health, and rigorous human-AI interaction. It is unlikely that these will be (...)
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  11.  35
    Frontiers of Artificial Intelligence, Ethics, and Multidisciplinary Applications: 1st International Conference on Frontiers of AI, Ethics, and Multidisciplinary Applications (FAIEMA), Greece, 2023.Mina Farmanbar, Maria Tzamtzi, Ajit Kumar Verma & Antorweep Chakravorty (eds.) - 2024 - Springer Nature Singapore.
    This groundbreaking proceedings volume explores the integration of Artificial Intelligence (AI) across key domains—healthcare, finance, education, robotics, industrial and other engineering applications —unveiling its transformative potential and practical implications. With a multidisciplinary lens, it transcends technical aspects, fostering a comprehensive understanding while bridging theory and practice. Approaching the subject matter with depth, the book combines theoretical foundations with real-world case studies, empowering researchers, professionals, and enthusiasts with the knowledge and tools to effectively harness AI. Encompassing diverse AI topics— (...) learning, natural language processing, computer vision, data analytics and supervisory control — the volume showcases state-of-the-art techniques propelling AI advancements. Structured into four parts: Part 1: Artificial Intelligence (AI), explores evolving deep neural networks, reinforcement learning, and explainable AI, providing a deep dive into the technical foundations of AI advancements. Part 2: Robotics and Control Systems, delves into the integration of AI in robotics and automatic control, addressing supervisory control, automated robotic movement coordination, anomaly detection, dynamic programming, and fault tolerance, offering insights into the evolving landscape of intelligent automation. Part 3: AI and Society, examines the societal impact of AI through chapters on ethical considerations, economic growth, environmental engagements, and hazard management, providing a holistic perspective on AI's role in shaping society. Part 4: PhD Symposium, presents the future of AI through cutting-edge research, covering legal and ethical dimensions, privacy considerations, and computationally efficient solutions, offering a glimpse into the next generation of AI advancements. Catering to a diverse audience—from industry leaders to students—the volume consolidates the expertise of renowned professionals, serving as a comprehensive resource for navigating the ever-evolving AI landscape. An essential reference for those staying at the forefront of AI developments. (shrink)
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  12. Solving the Black Box Problem: A Normative Framework for Explainable Artificial Intelligence.Carlos Zednik - 2019 - Philosophy and Technology 34 (2):265-288.
    Many of the computing systems programmed using Machine Learning are opaque: it is difficult to know why they do what they do or how they work. Explainable Artificial Intelligence aims to develop analytic techniques that render opaque computing systems transparent, but lacks a normative framework with which to evaluate these techniques’ explanatory successes. The aim of the present discussion is to develop such a framework, paying particular attention to different stakeholders’ distinct explanatory requirements. Building (...)
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  13.  21
    COVID-19, artificial intelligence, ethical challenges and policy implications.Muhammad Anshari, Mahani Hamdan, Norainie Ahmad, Emil Ali & Hamizah Haidi - 2023 - AI and Society 38 (2):707-720.
    As the COVID-19 outbreak remains an ongoing issue, there are concerns about its disruption, the level of its disruption, how long this pandemic is going to last, and how innovative technological solutions like Artificial Intelligence (AI) and expert systems can assist to deal with this pandemic. AI has the potential to provide extremely accurate insights for an organization to make better decisions based on collected data. Despite the numerous advantages that may be achieved by AI, the use (...)
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  14.  9
    Artificial Intelligence and Symbolic Computation: International Conference AISC 2000 Madrid, Spain, July 17-19, 2000. Revised Papers.International Conference Aisc & John A. Campbell - 2001 - Springer.
    This book constitutes the thoroughly refereed post-proceedings of the International Conference on Artificial Intelligence and Symbolic Computation, AISC 2000, held in Madrid, Spain in July 2000. The 17 revised full papers presented together with three invited papers were carefully reviewed and revised for inclusion in the book. Among the topics addressed are automated theorem proving, logical reasoning, mathematical modeling of multi-agent systems, expert systems and machine learning, computational mathematics, engineering, and industrial applications.
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  15.  14
    An Efficient CNN Model for COVID-19 Disease Detection Based on X-Ray Image Classification.Aijaz Ahmad Reshi, Furqan Rustam, Arif Mehmood, Abdulaziz Alhossan, Ziyad Alrabiah, Ajaz Ahmad, Hessa Alsuwailem & Gyu Sang Choi - 2021 - Complexity 2021:1-12.
    Artificial intelligence techniques in general and convolutional neural networks in particular have attained successful results in medical image analysis and classification. A deep CNN architecture has been proposed in this paper for the diagnosis of COVID-19 based on the chest X-ray image classification. Due to the nonavailability of sufficient-size and good-quality chest X-ray image dataset, an effective and accurate CNN classification was a challenge. To deal with these complexities such as the availability of a very-small-sized and (...)
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  16. Redesigning Relations: Coordinating Machine Learning Variables and Sociobuilt Contexts in COVID-19 and Beyond.Hannah Howland, Vadim Keyser & Farzad Mahootian - 2022 - In Sepehr Ehsani, Patrick Glauner, Philipp Plugmann & Florian M. Thieringer (eds.), The Future Circle of Healthcare: AI, 3D Printing, Longevity, Ethics, and Uncertainty Mitigation. Springer. pp. 179–205.
    We explore multi-scale relations in artificial intelligence (AI) use in order to identify difficulties with coordinating relations between users, machine learning (ML) processes, and “sociobuilt contexts”—specifically in terms of their applications to medical technologies and decisions. We begin by analyzing a recent COVID-19 machine learning case study in order to present the difficulty of traversing the detailed causal topography of “sociobuilt contexts.” We propose that the adequate representation of the interactions between social and (...)
     
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  17.  5
    Machine learning techniques to make computers easier to use.Hiroshi Motoda & Kenichi Yoshida - 1998 - Artificial Intelligence 103 (1-2):295-321.
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  18. Using Neutrosophic Trait Measures to Analyze Impostor Syndrome in College Students after COVID-19 Pandemic with Machine Learning.Riya Eliza Shaju, Meghana Dirisala, Muhammad Ali Najjar, Ilanthenral Kandasamy, Vasantha Kandasamy & Florentin Smarandache - 2023 - Neutrosophic Sets and Systems 60:317-334.
    Impostor syndrome or Impostor phenomenon is a belief that a person thinks their success is due to luck or external factors, not their abilities. This psychological trait is present in certain groups like women. In this paper, we propose a neutrosophic trait measure to represent the psychological concept of the trait-anti trait using refined neutrosophic sets. This study analysed a group of 200 undergraduate students for impostor syndrome, perfectionism, introversion and self-esteem: after the COVID pandemic break in (...)
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  19.  13
    What do we really know about the drivers of undeclared work? An evaluation of the current state of affairs using machine learning.Josip Franic - forthcoming - AI and Society:1-20.
    It is nowadays widely understood that undeclared work cannot be efficiently combated without a holistic view on the mechanisms underlying its existence. However, the question remains whether we possess all the pieces of the holistic puzzle. To fill the gap, in this paper, we test if the features so far known to affect the behaviour of taxpayers are sufficient to detect noncompliance with outstanding precision. This is done by training seven supervised machine learning models on the compilation of (...)
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  20. Artificial intelligence & games: Should computational psychology be revalued?Marco Ernandes - 2005 - Topoi 24 (2):229-242.
    The aims of this paper are threefold: To show that game-playing (GP), the discipline of Artificial Intelligence (AI) concerned with the development of automated game players, has a strong epistemological relevance within both AI and the vast area of cognitive sciences. In this context games can be seen as a way of securely reducing (segmenting) real-world complexity, thus creating the laboratory environment necessary for testing the diverse types and facets of intelligence produced by computer models. This (...)
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  21.  2
    Towards Transnational Fairness in Machine Learning: A Case Study in Disaster Response Systems.Cem Kozcuer, Anne Mollen & Felix Bießmann - 2024 - Minds and Machines 34 (2):1-26.
    Research on fairness in machine learning (ML) has been largely focusing on individual and group fairness. With the adoption of ML-based technologies as assistive technology in complex societal transformations or crisis situations on a global scale these existing definitions fail to account for algorithmic fairness transnationally. We propose to complement existing perspectives on algorithmic fairness with a notion of transnational algorithmic fairness and take first steps towards an analytical framework. We exemplify the relevance of a transnational fairness assessment (...)
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  22. Artificial Intelligence for the Internal Democracy of Political Parties.Claudio Novelli, Giuliano Formisano, Prathm Juneja, Sandri Giulia & Luciano Floridi - manuscript
    The article argues that AI can enhance the measurement and implementation of democratic processes within political parties, known as Intra-Party Democracy (IPD). It identifies the limitations of traditional methods for measuring IPD, which often rely on formal parameters, self-reported data, and tools like surveys. Such limitations lead to the collection of partial data, rare updates, and significant demands on resources. To address these issues, the article suggests that specific data management and Machine Learning (ML) techniques, such as (...)
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  23. Persons or datapoints?: Ethics, artificial intelligence, and the participatory turn in mental health research.Joshua August Skorburg, Kieran O'Doherty & Phoebe Friesen - 2024 - American Psychologist 79 (1):137-149.
    This article identifies and examines a tension in mental health researchers’ growing enthusiasm for the use of computational tools powered by advances in artificial intelligence and machine learning (AI/ML). Although there is increasing recognition of the value of participatory methods in science generally and in mental health research specifically, many AI/ML approaches, fueled by an ever-growing number of sensors collecting multimodal data, risk further distancing participants from research processes and rendering them as mere vectors or collections (...)
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  24.  8
    Artificial Intelligence as a Harbinger of Significant Changes in Education.Anton Maleiev - 2024 - Filosofiya osvity Philosophy of Education 29 (2):143-159.
    The rapid development of programs based on the principles of machine learning (ML) and artificial intelligence (AI) signals significant changes in the components of education, namely in the provider, the tool of transmission, and the recipient of knowledge. Historical data analysis regarding the key functions of education serves as the basis for identifying fundamental innovations introduced through AI and ML. The impact of writing, printing, and the Internet has significantly altered the tool for knowledge (...)
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  25.  9
    Coverage of well-being within artificial intelligence, machine learning and robotics academic literature: the case of disabled people.Aspen Lillywhite & Gregor Wolbring - forthcoming - AI and Society:1-19.
    Well-being is an important policy concept including in discussions around the use of artificial intelligence, machine learning and robotics. Disabled people experience challenges in their well-being. Therefore, the aim of our scoping review study of academic abstracts employing Scopus, IEEE Xplore, Compendex and the 70 databases from EBSCO-HOST as sources was to better understand how academic literature focusing on AI/ML/robotics engages with well-being in relation to disabled people. Our objective was to answer the following research question: (...)
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  26. Intelligent machines and warfare: Historical debates and epistemologically motivated concerns.Roberto Cordeschi & Guglielmo Tamburrini - 2005 - In L. Magnani (ed.), European Computing and Philosophy Conference (ECAP 2004). College Publications.
    The early examples of self-directing robots attracted the interest of both scientific and military communities. Biologists regarded these devices as material models of animal tropisms. Engineers envisaged the possibility of turning self-directing robots into new “intelligent” torpedoes during World War I. Starting from World War II, more extensive interactions developed between theoretical inquiry and applied military research on the subject of adaptive and intelligent machinery. Pioneers of Cybernetics were involved in the development of goal-seeking warfare devices. But collaboration occasionally turned (...)
     
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  27.  39
    Philosophical Inquiry into Computer Intentionality: Machine Learning and Value Sensitive Design.Dmytro Mykhailov - 2023 - Human Affairs 33 (1):115-127.
    Intelligent algorithms together with various machine learning techniques hold a dominant position among major challenges for contemporary value sensitive design. Self-learning capabilities of current AI applications blur the causal link between programmer and computer behavior. This creates a vital challenge for the design, development and implementation of digital technologies nowadays. This paper seeks to provide an account of this challenge. The main question that shapes the current analysis is the following: What conceptual tools can be (...)
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  28.  13
    Arabic sentiment analysis about online learning to mitigate covid-19.Manal Mostafa Ali - 2021 - Journal of Intelligent Systems 30 (1):524-540.
    The Covid-19 pandemic is forcing organizations to innovate and change their strategies for a new reality. This study collects online learning related tweets in Arabic language to perform a comprehensive emotion mining and sentiment analysis (SA) during the pandemic. The present study exploits Natural Language Processing (NLP) and Machine Learning (ML) algorithms to extract subjective information, determine polarity and detect the feeling. We begin with pulling out the tweets using Twitter APIs and then preparing for intensive (...)
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  29.  19
    Artificial intelligence and modern planned economies: a discussion on methods and institutions.Spyridon Samothrakis - forthcoming - AI and Society:1-12.
    Interest in computerised central economic planning (CCEP) has seen a resurgence, as there is strong demand for an alternative vision to modern free (or not so free) market liberal capitalism. Given the close links of CCEP with what we would now broadly call artificial intelligence (AI)—e.g. optimisation, game theory, function approximation, machine learning, automated reasoning—it is reasonable to draw direct analogues and perform an analysis that would help identify what commodities and institutions we should see for (...)
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  30.  45
    Machines Learn Better with Better Data Ontology: Lessons from Philosophy of Induction and Machine Learning Practice.Dan Li - 2023 - Minds and Machines 33 (3):429-450.
    As scientists start to adopt machine learning (ML) as one research tool, the security of ML and the knowledge generated become a concern. In this paper, I explain how supervised ML can be improved with better data ontology, or the way we make categories and turn information into data. More specifically, we should design data ontology in such a way that is consistent with the knowledge that we have about the target phenomenon so that such ontology can (...)
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  31.  72
    Using machine learning to create a repository of judgments concerning a new practice area: a case study in animal protection law.Joe Watson, Guy Aglionby & Samuel March - 2023 - Artificial Intelligence and Law 31 (2):293-324.
    Judgments concerning animals have arisen across a variety of established practice areas. There is, however, no publicly available repository of judgments concerning the emerging practice area of animal protection law. This has hindered the identification of individual animal protection law judgments and comprehension of the scale of animal protection law made by courts. Thus, we detail the creation of an initial animal protection law repository using natural language processing and machine learning techniques. This involved domain expert classification (...)
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  32.  37
    Thirty years of artificial intelligence and law: the third decade.Serena Villata, Michal Araszkiewicz, Kevin Ashley, Trevor Bench-Capon, L. Karl Branting, Jack G. Conrad & Adam Wyner - 2022 - Artificial Intelligence and Law 30 (4):561-591.
    The first issue of Artificial Intelligence and Law journal was published in 1992. This paper offers some commentaries on papers drawn from the Journal’s third decade. They indicate a major shift within Artificial Intelligence, both generally and in AI and Law: away from symbolic techniques to those based on Machine Learning approaches, especially those based on Natural Language texts rather than feature sets. Eight papers are discussed: two concern the management and use of (...)
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  33.  8
    Integrating Artificial Intelligence into Scholarly Communications for Enhanced Human Cognitive Abilities: The War for Philosophy?Murtala Ismail Adakawa - 2024 - Revista Internacional de Filosofía Teórica y Práctica 4 (1):123-159.
    The paper explores integrating AI into scholarly communication for enhanced human cognitive abilities. The conception of human-machine communication (HMC) approach that regards AI-based technologies not as interactive objects, but communicative subjects, throws issues that are more philosophical in scholarly communication. It is a known fact that, there is increased interaction between humans and machines especially consolidated by COVID-19 pandemic, which heightened the development of Individual Adaptive Learning System thereby necessarily requiring inputs from NI to strengthen AI. This (...)
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  34.  73
    Machine learning’s limitations in avoiding automation of bias.Daniel Varona, Yadira Lizama-Mue & Juan Luis Suárez - 2021 - AI and Society 36 (1):197-203.
    The use of predictive systems has become wider with the development of related computational methods, and the evolution of the sciences in which these methods are applied Solon and Selbst and Pedreschi et al.. The referred methods include machine learning techniques, face and/or voice recognition, temperature mapping, and other, within the artificial intelligence domain. These techniques are being applied to solve problems in socially and politically sensitive areas such as crime prevention and justice management, (...)
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  35. Philosophy and theory of artificial intelligence 2017.Vincent C. Müller (ed.) - 2017 - Berlin: Springer.
    This book reports on the results of the third edition of the premier conference in the field of philosophy of artificial intelligence, PT-AI 2017, held on November 4 - 5, 2017 at the University of Leeds, UK. It covers: advanced knowledge on key AI concepts, including complexity, computation, creativity, embodiment, representation and superintelligence; cutting-edge ethical issues, such as the AI impact on human dignity and society, responsibilities and rights of machines, as well as AI threats to humanity and (...)
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  36.  17
    States of computing: On government organization and artificial intelligence in Canada.Fenwick McKelvey & Théo Lepage-Richer - 2022 - Big Data and Society 9 (2).
    With technologies like machine learning and data analytics being deployed as privileged means to improve how contemporary bureaucracies work, many governments around the world have turned to artificial intelligence as a tool of statecraft. In that context, our paper uses Canada as a critical case to investigate the relationship between ideals of good government and good technology. We do so through not one, but two Trudeaus—celebrity Prime Minister Justin Trudeau (2015—…) and his equally famous father, (...)
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  37.  7
    Inclusion of Clinicians in the Development and Evaluation of Clinical Artificial Intelligence Tools: A Systematic Literature Review.Stephanie Tulk Jesso, Aisling Kelliher, Harsh Sanghavi, Thomas Martin & Sarah Henrickson Parker - 2022 - Frontiers in Psychology 13.
    The application of machine learning and artificial intelligence in healthcare domains has received much attention in recent years, yet significant questions remain about how these new tools integrate into frontline user workflow, and how their design will impact implementation. Lack of acceptance among clinicians is a major barrier to the translation of healthcare innovations into clinical practice. In this systematic review, we examine when and how clinicians are consulted about their needs and desires for clinical AI (...)
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  38.  4
    From intelligent machines to the human brain.Peggy Seriès & Mark Sprevak - 2014 - In Michela Massimi (ed.), Philosophy and the Sciences for Everyone. pp. 86-102.
    This chapter introduces the idea that computation is a key tool that can help us understand how the human brain works. Recent years have seen a revolution in the kinds of tasks computers can perform. Underlying these advances is the burgeoning field of machine learning, a branch of artificial intelligence, which aims at creating machines that can act without being programmed, learning from data and experience. Rather startlingly, it turns out that the same methods (...)
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  39. A Citizen's Guide to Artificial Intelligence.James Maclaurin, John Danaher, John Zerilli, Colin Gavaghan, Alistair Knott, Joy Liddicoat & Merel Noorman - 2021 - Cambridge, MA, USA: MIT Press.
    A concise but informative overview of AI ethics and policy. -/- Artificial intelligence, or AI for short, has generated a staggering amount of hype in the past several years. Is it the game-changer it's been cracked up to be? If so, how is it changing the game? How is it likely to affect us as customers, tenants, aspiring homeowners, students, educators, patients, clients, prison inmates, members of ethnic and sexual minorities, and voters in liberal democracies? Authored by experts (...)
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  40.  10
    Health professions students’ perceptions of artificial intelligence and its integration to health professions education and healthcare: a thematic analysis.Ejercito Mangawa Balay-Odao, Dinara Omirzakova, Srinivasa Rao Bolla, Joseph U. Almazan & Jonas Preposi Cruz - forthcoming - AI and Society:1-11.
    Artificial intelligence (AI) is being tightly integrated into healthcare today. Even though AI is being utilized in healthcare, its application in clinical settings and health professions education is still controversial. The study described the perceptions of AI and its integration into health professions education and healthcare among health professions students. This descriptive phenomenological study analyzed the data from a purposive sample of 33 health professions students at a university in Kazakhstan using the thematic approach. Data collection was conducted (...)
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  41.  34
    Trust criteria for artificial intelligence in health: normative and epistemic considerations.Kristin Kostick-Quenet, Benjamin H. Lang, Jared Smith, Meghan Hurley & Jennifer Blumenthal-Barby - forthcoming - Journal of Medical Ethics.
    Rapid advancements in artificial intelligence and machine learning (AI/ML) in healthcare raise pressing questions about how much users should trust AI/ML systems, particularly for high stakes clinical decision-making. Ensuring that user trust is properly calibrated to a tool’s computational capacities and limitations has both practical and ethical implications, given that overtrust or undertrust can influence over-reliance or under-reliance on algorithmic tools, with significant implications for patient safety and health outcomes. It is, thus, important to better (...)
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  42. Ethical Implications of Alzheimer’s Disease Prediction in Asymptomatic Individuals Through Artificial Intelligence.Frank Ursin, Cristian Timmermann & Florian Steger - 2021 - Diagnostics 11 (3):440.
    Biomarker-based predictive tests for subjectively asymptomatic Alzheimer’s disease (AD) are utilized in research today. Novel applications of artificial intelligence (AI) promise to predict the onset of AD several years in advance without determining biomarker thresholds. Until now, little attention has been paid to the new ethical challenges that AI brings to the early diagnosis in asymptomatic individuals, beyond contributing to research purposes, when we still lack adequate treatment. The aim of this paper is to explore the ethical arguments (...)
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  43.  21
    Machine learning techniques for computer-based decision systems in the operating theatre: application to analgesia delivery.Jose M. Gonzalez-Cava, Rafael Arnay, Juan Albino Mendez-Perez, Ana León, María Martín, Jose A. Reboso, Esteban Jove-Perez & Jose Luis Calvo-Rolle - 2021 - Logic Journal of the IGPL 29 (2):236-250.
    This work focuses on the application of machine learning techniques to assist the clinicians in the administration of analgesic drug during general anaesthesia. Specifically, the main objective is to propose the basis of an intelligent system capable of making decisions to guide the opioid dose changes based on a new nociception monitor, the analgesia nociception index. Clinical data were obtained from 15 patients undergoing cholecystectomy surgery. By means of an off-line study, machine learning techniques (...)
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  44. Levels of explicability for medical artificial intelligence: What do we normatively need and what can we technically reach?Frank Ursin, Felix Lindner, Timo Ropinski, Sabine Salloch & Cristian Timmermann - 2023 - Ethik in der Medizin 35 (2):173-199.
    Definition of the problem The umbrella term “explicability” refers to the reduction of opacity of artificial intelligence (AI) systems. These efforts are challenging for medical AI applications because higher accuracy often comes at the cost of increased opacity. This entails ethical tensions because physicians and patients desire to trace how results are produced without compromising the performance of AI systems. The centrality of explicability within the informed consent process for medical AI systems compels an ethical reflection on the (...)
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  45. Psychological Impact of COVID-19 on College Students After School Reopening: A Cross-Sectional Study Based on Machine Learning.Ziyuan Ren, Yaodong Xin, Junpeng Ge, Zheng Zhao, Dexiang Liu, Roger C. M. Ho & Cyrus S. H. Ho - 2021 - Frontiers in Psychology 12.
    COVID-19, the most severe public health problem to occur in the past 10 years, has greatly impacted people's mental health. Colleges in China have reopened, and how to prevent college students from suffering secondary damage due to school reopening remains elusive. This cross-sectional study was aimed to evaluate the psychological impact of COVID-19 after school reopening and explore via machine learning the factors that influence anxiety and depression among students. Among the 478 valid online questionnaires collected (...)
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    Decoding Intracranial EEG With Machine Learning: A Systematic Review.Nykan Mirchi, Nebras M. Warsi, Frederick Zhang, Simeon M. Wong, Hrishikesh Suresh, Karim Mithani, Lauren Erdman & George M. Ibrahim - 2022 - Frontiers in Human Neuroscience 16.
    Advances in intracranial electroencephalography and neurophysiology have enabled the study of previously inaccessible brain regions with high fidelity temporal and spatial resolution. Studies of iEEG have revealed a rich neural code subserving healthy brain function and which fails in disease states. Machine learning, a form of artificial intelligence, is a modern tool that may be able to better decode complex neural signals and enhance interpretation of these data. To date, a number of publications have applied (...)
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  47.  14
    Principle-based recommendations for big data and machine learning in food safety: the P-SAFETY model.Salvatore Sapienza & Anton Vedder - 2023 - AI and Society 38 (1):5-20.
    Big data and Machine learning Techniques are reshaping the way in which food safety risk assessment is conducted. The ongoing ‘datafication’ of food safety risk assessment activities and the progressive deployment of probabilistic models in their practices requires a discussion on the advantages and disadvantages of these advances. In particular, the low level of trust in EU food safety risk assessment framework highlighted in 2019 by an EU-funded survey could be exacerbated by novel methods of analysis. The (...)
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  48.  13
    Citizens’ data afterlives: Practices of dataset inclusion in machine learning for public welfare.Helene Friis Ratner & Nanna Bonde Thylstrup - forthcoming - AI and Society:1-11.
    Public sector adoption of AI techniques in welfare systems recasts historic national data as resource for machine learning. In this paper, we examine how the use of register data for development of predictive models produces new ‘afterlives’ for citizen data. First, we document a Danish research project’s practical efforts to develop an algorithmic decision-support model for social workers to classify children’s risk of maltreatment. Second, we outline the tensions emerging from project members’ negotiations about which datasets to (...)
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    Dancing with robots: acceptability of humanoid companions to reduce loneliness during COVID-19 (and beyond).Guy Moshe Ross - forthcoming - AI and Society:1-12.
    The purpose of this research is to explore the acceptance of social robots as companions. Understanding what affects the acceptance of humanoid companions may give society tools that will help people overcome loneliness throughout pandemics, such as COVID-19 and beyond. Based on regulatory focus theory, it is proposed that there is a relationship between goal-directed motivation and acceptance of robots as companions. The theory of regulatory focus posits that goal-directed behavior is regulated by two motivational systems—promotion and prevention. People (...)
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  50.  74
    Automatic Detection of Focal Cortical Dysplasia Type II in MRI: Is the Application of Surface-Based Morphometry and Machine Learning Promising?Zohreh Ganji, Mohsen Aghaee Hakak, Seyed Amir Zamanpour & Hoda Zare - 2021 - Frontiers in Human Neuroscience 15.
    Background and ObjectivesFocal cortical dysplasia is a type of malformations of cortical development and one of the leading causes of drug-resistant epilepsy. Postoperative results improve the diagnosis of lesions on structural MRIs. Advances in quantitative algorithms have increased the identification of FCD lesions. However, due to significant differences in size, shape, and location of the lesion in different patients and a big deal of time for the objective diagnosis of lesion as well as the dependence of individual interpretation, sensitive approaches (...)
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