Results for 'artificial intelligence and big data '

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  1. Evaluating the use of artificial intelligence and big data in policy making: Unpacking black boxes and testing white boxes.Frans L. Leeuw - 2024 - In Andrew Koleros, Marie-Hélène Adrien & Tony Tyrrell (eds.), Theories of change in reality: strengths, limitations and future directions. New York, NY: Routledge.
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  2.  36
    Artificial intelligence and medical research databases: ethical review by data access committees.Nina Hallowell, Darren Treanor, Daljeet Bansal, Graham Prestwich, Bethany J. Williams & Francis McKay - 2023 - BMC Medical Ethics 24 (1):1-7.
    BackgroundIt has been argued that ethics review committees—e.g., Research Ethics Committees, Institutional Review Boards, etc.— have weaknesses in reviewing big data and artificial intelligence research. For instance, they may, due to the novelty of the area, lack the relevant expertise for judging collective risks and benefits of such research, or they may exempt it from review in instances involving de-identified data.Main bodyFocusing on the example of medical research databases we highlight here ethical issues around de-identified (...) sharing which motivate the need for review where oversight by ethics committees is weak. Though some argue for ethics committee reform to overcome these weaknesses, it is unclear whether or when that will happen. Hence, we argue that ethical review can be done by data access committees, since they have de facto purview of big data and artificial intelligence projects, relevant technical expertise and governance knowledge, and already take on some functions of ethical review. That said, like ethics committees, they may have functional weaknesses in their review capabilities. To strengthen that function, data access committees must think clearly about the kinds of ethical expertise, both professional and lay, that they draw upon to support their work.ConclusionData access committees can undertake ethical review of medical research databases provided they enhance that review function through professional and lay ethical expertise. (shrink)
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  3.  22
    Fuzzy logic: applications in artificial intelligence, big data, and machine learning.Lefteri H. Tsoukalas - 2023 - New York: McGraw Hill.
    This hands-on guide offers clear explanations of fuzzy logic along with practical uses and detailed examples. Written by an award-winning engineer and experienced author, Fuzzy Logic: Applications in Artificial Intelligence, Big Data, and Machine Learning is aimed at improving competence and skills in students and professionals alike. Inside, you will discover how to apply fuzzy logic and migrate to a new man-machine relationship in the context of pervasive digitization and big data across emerging technologies. The book (...)
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  4.  93
    Three Problems with Big Data and Artificial Intelligence in Medicine.Benjamin Chin-Yee & Ross Upshur - 2019 - Perspectives in Biology and Medicine 62 (2):237-256.
    We live in the Age of Big Data. In medicine, artificial intelligence and machine learning algorithms, fueled by big data, promise to change how physicians make diagnoses, determine prognoses, and develop new treatments. An exponential rise in articles on these topics is seen in the medical literature. Recent applications range from the use of deep learning neural networks to diagnose diabetic retinopathy and skin cancer from image databases, to the use of various machine learning algorithms for (...)
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  5.  22
    Artificial Intelligence Teaching System and Data Processing Method Based on Big Data.Bo Xu - 2021 - Complexity 2021:1-11.
    With the rapid development of big data, artificial intelligence teaching systems have gradually been developed extensively. The powerful artificial intelligence teaching systems have become a tool for teachers and students to learn independently in various universities. The characteristic of artificial intelligence teaching system is to get rid of the constraints of traditional teaching time and space and build a brand-new learning environment, which is the mainstream trend of future learning. As the carrier of (...)
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  6.  48
    Big data, surveillance, and migration: a neo-republican account.Alex Sager - 2023 - Journal of Global Ethics 19 (3):335-346.
    Big data, artificial intelligence, and increasingly precise biometric techniques have given state and private organizations unprecedented scope and power for the surveillance and dataveillance of migrants. In many cases, these technologies have evolved faster than our legal, political, and ethical mechanisms. This paper, drawing on current discussions of justice and non-domination, proposes a non-domination-based ethics of digital surveillance and mobility, in which the legitimacy of these technologies depends on their avoidance of the arbitrary use of power. This (...)
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  7.  44
    Law, artificial intelligence, and synaesthesia.Rostam J. Neuwirth - 2024 - AI and Society 39 (3):901-912.
    In 2021, 193 Member States at UNESCO’s General Conference adopted the Recommendation on the Ethics of Artificial Intelligence as the first important step towards a future global standard-setting instrument on the subject. The text reflects an emerging consensus among the international community about the growing ethical concerns with artificial intelligence (AI). Among these concerns are also serious risks and dangers attributed to the manipulative effects of AI, which can be further exacerbated by the creative combination of (...)
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    Opening the black boxes of the black carpet in the era of risk society: a sociological analysis of AI, algorithms and big data at work through the case study of the Greek postal services.Christos Kouroutzas & Venetia Palamari - forthcoming - AI and Society:1-14.
    This article draws on contributions from the Sociology of Science and Technology and Science and Technology Studies, the Sociology of Risk and Uncertainty, and the Sociology of Work, focusing on the transformations of employment regarding expanded automation, robotization and informatization. The new work patterns emerging due to the introduction of software and hardware technologies, which are based on artificial intelligence, algorithms, big data gathering and robotic systems are examined closely. This article attempts to “open the black boxes” (...)
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  9. Artificial intelligence and the value of transparency.Joel Walmsley - 2021 - AI and Society 36 (2):585-595.
    Some recent developments in Artificial Intelligence—especially the use of machine learning systems, trained on big data sets and deployed in socially significant and ethically weighty contexts—have led to a number of calls for “transparency”. This paper explores the epistemological and ethical dimensions of that concept, as well as surveying and taxonomising the variety of ways in which it has been invoked in recent discussions. Whilst “outward” forms of transparency may be straightforwardly achieved, what I call “functional” transparency (...)
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  10.  12
    Big Data: From modern fears to enlightened and vigilant embrace of new beginnings.Nicole Dewandre - 2020 - Big Data and Society 7 (2).
    In The Black Box Society, Frank Pasquale develops a critique of asymmetrical power: corporations’ secrecy is highly valued by legal orders, but persons’ privacy is continually invaded by these corporations. This response proceeds in three stages. I first highlight important contributions of The Black Box Society to our understanding of political and legal relationships between persons and corporations. I then critique a key metaphor in the book, and the role of transparency and ‘watchdogging’ in its primary policy prescriptions. I then (...)
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  11.  44
    Expectations of artificial intelligence and the performativity of ethics: Implications for communication governance.John D. Kelleher, Marguerite Barry & Aphra Kerr - 2020 - Big Data and Society 7 (1).
    This article draws on the sociology of expectations to examine the construction of expectations of ‘ethical AI’ and considers the implications of these expectations for communication governance. We first analyse a range of public documents to identify the key actors, mechanisms and issues which structure societal expectations around artificial intelligence and an emerging discourse on ethics. We then explore expectations of AI and ethics through a survey of members of the public. Finally, we discuss the implications of our (...)
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  12.  35
    Artificial Intelligence and Healthcare: The Impact of Algorithmic Bias on Health Disparities.Natasha H. Williams - 2023 - Springer Verlag.
    This book explores the ethical problems of algorithmic bias and its potential impact on populations that experience health disparities by examining the historical underpinnings of explicit and implicit bias, the influence of the social determinants of health, and the inclusion of racial and ethnic minorities in data. Over the last twenty-five years, the diagnosis and treatment of disease have advanced at breakneck speeds. Currently, we have technologies that have revolutionized the practice of medicine, such as telemedicine, precision medicine, big (...)
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  13.  17
    Between academic standards and wild innovation: assessing big data and artificial intelligence projects in research ethics committees.Andreas Brenneis, Petra Gehring & Annegret Lamadé - 2024 - Ethik in der Medizin 36 (4):473-491.
    Definition of the problem In medicine, as well as in other disciplines, computer science expertise is becoming increasingly important. This requires a culture of interdisciplinary assessment, for which medical ethics committees are not well prepared. The use of big data and artificial intelligence (AI) methods (whether developed in-house or in the form of “tools”) pose further challenges for research ethics reviews. Arguments This paper describes the problems and suggests solving them through procedural changes. Conclusion An assessment that (...)
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  14.  52
    Is Big Data the New Stethoscope? Perils of Digital Phenotyping to Address Mental Illness.Şerife Tekin - 2020 - Philosophy and Technology 34 (3):447-461.
    Advances in applications of artificial intelligence and the use of data analytics technology in biomedicine are creating optimism, as many believe these technologies will fill the need-availability gap by increasing resources for mental health care. One resource considered especially promising is smartphone psychotherapy chatbots, i.e., artificially intelligent bots that offer cognitive behavior therapy to their users with the aim of helping them improve their mental health. While a number of studies have highlighted the positive outcomes of using (...)
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  15.  38
    Going beyond the “common suspects”: to be presumed innocent in the era of algorithms, big data and artificial intelligence.Athina Sachoulidou - forthcoming - Artificial Intelligence and Law:1-54.
    This article explores the trend of increasing automation in law enforcement and criminal justice settings through three use cases: predictive policing, machine evidence and recidivism algorithms. The focus lies on artificial-intelligence-driven tools and technologies employed, whether at pre-investigation stages or within criminal proceedings, in order to decode human behaviour and facilitate decision-making as to whom to investigate, arrest, prosecute, and eventually punish. In this context, this article first underlines the existence of a persistent dilemma between the goal of (...)
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  16.  41
    Cybersyn, big data, variety engineering and governance.Raul Espejo - 2022 - AI and Society 37 (3):1163-1177.
    This contribution offers reflections about Chilean Cybersyn, 50 years ago. In recent years, Cybersyn, has received significant attention. It was the brainchild of Stafford Beer, who conceived it to support the transformation of the Chilean economy from its bureaucratic history to hopefully create a vibrant and modern society, driven by cybernetic tools. These aspects have received much attention in recent times; however, in this contribution, I want to discuss how working in Cybersyn influenced my work after the coup of 1973. (...)
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  17.  72
    Application of artificial intelligence: risk perception and trust in the work context with different impact levels and task types.Uwe Klein, Jana Depping, Laura Wohlfahrt & Pantaleon Fassbender - 2024 - AI and Society 39 (5):2445-2456.
    Following the studies of Araujo et al. (AI Soc 35:611–623, 2020) and Lee (Big Data Soc 5:1–16, 2018), this empirical study uses two scenario-based online experiments. The sample consists of 221 subjects from Germany, differing in both age and gender. The original studies are not replicated one-to-one. New scenarios are constructed as realistically as possible and focused on everyday work situations. They are based on the AI acceptance model of Scheuer (Grundlagen intelligenter KI-Assistenten und deren vertrauensvolle Nutzung. Springer, Wiesbaden, (...)
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  18.  28
    The future of urban models in the Big Data and AI era: a bibliometric analysis.Marion Maisonobe - 2022 - AI and Society 37 (1):177-194.
    This article questions the effects on urban research dynamics of the Big Data and AI turn in urban management. Increasing access to large datasets collected in real time could make certain mathematical models developed in research fields related to the management of urban systems obsolete. These ongoing evolutions are the subject of numerous works whose main angle of reflection is the future of cities rather than the transformations at work in the academic field. Our article proposes grasp the scientific (...)
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  19.  78
    An Eye for Artificial Intelligence: Insights Into the Governance of Artificial Intelligence and Vision for Future Research.Ruth V. Aguilera & Deepika Chhillar - 2022 - Business and Society 61 (5):1197-1241.
    In this 60th anniversary of Business & Society essay, we seek to make three main contributions at the intersection of governance and artificial intelligence. First, we aim to illuminate some of the deeper social, legal, organizational, and democratic challenges of rising AI adoption and resulting algorithmic power by reviewing AI research through a governance lens. Second, we propose an AI governance framework that aims to better assess AI challenges as well as how different governance modalities can support AI. (...)
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  20.  60
    Big Data and Compounding Injustice.Deborah Hellman - 2023 - Journal of Moral Philosophy 21 (1-2):62-83.
    This article argues that the fact that an action will compound a prior injustice counts as a reason against doing the action. I call this reason The Anti-Compounding Injustice principle or aci. Compounding injustice and the aci principle are likely to be relevant when analyzing the moral issues raised by “big data” and its combination with the computational power of machine learning and artificial intelligence. Past injustice can infect the data used in algorithmic decisions in two (...)
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  21.  23
    Black boxes, not green: Mythologizing artificial intelligence and omitting the environment.Benedetta Brevini - 2020 - Big Data and Society 7 (2).
    We are repeatedly told that AI will help us to solve some of the world's biggest challenges, from treating chronic diseases and reducing fatality rates in traffic accidents to fighting climate change and anticipating cybersecurity threats. However, the article contends that public discourse on AI systematically avoids considering AI’s environmental costs. Artificial Intelligence- Brevini argues- runs on technology, machines, and infrastructures that deplete scarce resources in their production, consumption, and disposal, thus increasing the amounts of energy in their (...)
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  22.  25
    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 variety of (...)
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  23. Challenges and Future Directions of Big Data and Artificial Intelligence in Education.Hui Luan, Peter Geczy, Hollis Lai, Janice Gobert, Stephen J. H. Yang, Hiroaki Ogata, Jacky Baltes, Rodrigo Guerra, Ping Li & Chin-Chung Tsai - 2020 - Frontiers in Psychology 11.
  24.  16
    Construction of an IoT customer operation analysis system based on big data analysis and human-centered artificial intelligence for web 4.0.Wei Li, Chenye Han, Baojing Liu & Xinxin Liu - 2022 - Journal of Intelligent Systems 31 (1):927-943.
    Internet of thing building sensors can capture several types of building operations, performances, and conditions and send them to a central dashboard to analyze data to support decision-making. Traditionally, laptops and cell phones are the majority of Internet-connected devices. IoT tracking allows customers to close the distance between devices and enterprises by collecting and analyzing various IoT data through connected devices, customers, and applications on the network. There is a lack of requirements for IoT edge applications security and (...)
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  25. Artificial intelligence: consciousness and conscience.Gunter Meissner - 2020 - AI and Society 35 (1):225-235.
    Our society is in the middle of the AI revolution. We discuss several applications of AI, in particular medical causality, where deep-learning neural networks screen through big data bases, extracting associations between a patient’s condition and possible causes. While beneficial in medicine, several questionable AI trading strategies have emerged in finance. Though advantages in many aspects of our lives, serious threats of AI exist. We suggest several regulatory measures to reduce these threats. We further discuss whether ‘full AI robots’ (...)
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  26. 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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  27.  78
    Justice, injustice, and artificial intelligence: Lessons from political theory and philosophy.Lucia M. Rafanelli - 2022 - Big Data and Society 9 (1).
    Some recent uses of artificial intelligence for facial recognition, evaluating resumes, and sorting photographs by subject matter have revealed troubling disparities in performance or impact based on the demographic traits of subject populations. These disparities raise pressing questions about how using artificial intelligence can work to promote justice or entrench injustice. Political theorists and philosophers have developed nuanced vocabularies and theoretical frameworks for understanding and adjudicating disputes about what justice requires and what constitutes injustice. The interdisciplinary (...)
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  28.  21
    Human’s Intuitive Mental Models as a Source of Realistic Artificial Intelligence and Engineering.Jyrki Suomala & Janne Kauttonen - 2022 - Frontiers in Psychology 13.
    Despite the success of artificial intelligence, we are still far away from AI that model the world as humans do. This study focuses for explaining human behavior from intuitive mental models’ perspectives. We describe how behavior arises in biological systems and how the better understanding of this biological system can lead to advances in the development of human-like AI. Human can build intuitive models from physical, social, and cultural situations. In addition, we follow Bayesian inference to combine intuitive (...)
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  29.  48
    Artificial intelligence, human intelligence and hybrid intelligence based on mutual augmentation.Gemma Newlands, Christoph Lutz & Mohammad Hossein Jarrahi - 2022 - Big Data and Society 9 (2).
    There is little consensus on what artificial intelligence (AI) systems may or may not embrace. Although this may point to multiplicity of interpretations and backgrounds, a lack of conceptual clarity could thwart the development of common ground around the concept among researchers, practitioners and users of AI and pave the way for misinterpretation and abuse of the concept. This article argues that one of the effective ways to delineate the concept of AI is to compare and contrast it (...)
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  30.  25
    (1 other version)Will Big Data and personalized medicine do the gender dimension justice?Antonio Carnevale, Emanuela A. Tangari, Andrea Iannone & Elena Sartini - 2021 - AI and Society:1-13.
    Over the last decade, humans have produced each year as much data as were produced throughout the entire history of humankind. These data, in quantities that exceed current analytical capabilities, have been described as “the new oil,” an incomparable source of value. This is true for healthcare, as well. Conducting analyses of large, diverse, medical datasets promises the detection of previously unnoticed clinical correlations and new diagnostic or even therapeutic possibilities. However, using Big Data poses several problems, (...)
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    Where is the human got to go? Artificial intelligence, machine learning, big data, digitalisation, and human–robot interaction in Industry 4.0 and 5.0. [REVIEW]Joachim Vogt - 2024 - AI and Society:1-5.
    Recently, Mr. Bauer (2020), CEO of BAM, a human resources service provider, reported about the introduction of a continuous change process using artificial intelligence. From this as a starting point, the article defines and discusses change processes, transformation management, and organisational development. The cudgels are taken up on behalf of the human-in-the-loop. It is argued, that the so-called “weak” artificial intelligence, including the human, is superior to the black box approach, hiding the system state as well (...)
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  32. Big Data Analytics in Healthcare: Exploring the Role of Machine Learning in Predicting Patient Outcomes and Improving Healthcare Delivery.Federico Del Giorgio Solfa & Fernando Rogelio Simonato - 2023 - International Journal of Computations Information and Manufacturing (Ijcim) 3 (1):1-9.
    Healthcare professionals decide wisely about personalized medicine, treatment plans, and resource allocation by utilizing big data analytics and machine learning. To guarantee that algorithmic recommendations are impartial and fair, however, ethical issues relating to prejudice and data privacy must be taken into account. Big data analytics and machine learning have a great potential to disrupt healthcare, and as these technologies continue to evolve, new opportunities to reform healthcare and enhance patient outcomes may arise. In order to investigate (...)
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  33. Big Data e Intelligenza Artificiale: Che Futuro Ci Aspetta?Giuseppe Longo - 2018 - Scienza E Filosofia 20:12–63.
    BIG DATA AND ARTIFICIAL INTELLIGENCE: A LOOK INTO THE FUTURE To say or write something innovative on the ongoing revolution in the fields of Big Data and Artificial Intelligence is very difficult. The advent of these two new technologies is in fact among the most relevant events in human history since in a little more than a decade it will likely lead to the creation of the First Artificial Intelligence of the Fourth (...)
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  34. Big Data Analytics and How to Buy an Election.Jakob Mainz, Rasmus Uhrenfeldt & Jorn Sonderholm - 2021 - Public Affairs Quarterly 32 (2):119-139.
    In this article, we show how it is possible to lawfully buy an election. The method we describe for buying an election is novel. The key things that make it possible to buy an election are the existence of public voter registration lists where one can see whether a given elector has voted in a particular election, and the existence of Big Data Analytics that with a high degree of accuracy can predict what a given elector will vote in (...)
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    Evidence, ethics and the promise of artificial intelligence in psychiatry.Melissa McCradden, Katrina Hui & Daniel Z. Buchman - 2023 - Journal of Medical Ethics 49 (8):573-579.
    Researchers are studying how artificial intelligence (AI) can be used to better detect, prognosticate and subgroup diseases. The idea that AI might advance medicine’s understanding of biological categories of psychiatric disorders, as well as provide better treatments, is appealing given the historical challenges with prediction, diagnosis and treatment in psychiatry. Given the power of AI to analyse vast amounts of information, some clinicians may feel obligated to align their clinical judgements with the outputs of the AI system. However, (...)
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  36. Co-design and ethical artificial intelligence for health: An agenda for critical research and practice.Joseph Donia & James A. Shaw - 2021 - Big Data and Society 8 (2).
    Applications of artificial intelligence/machine learning in health care are dynamic and rapidly growing. One strategy for anticipating and addressing ethical challenges related to AI/ml for health care is patient and public involvement in the design of those technologies – often referred to as ‘co-design’. Co-design has a diverse intellectual and practical history, however, and has been conceptualized in many different ways. Moreover, AI/ml introduces challenges to co-design that are often underappreciated. Informed by perspectives from critical data studies (...)
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  37.  27
    Emotional artificial intelligence in children’s toys and devices: Ethics, governance and practical remedies.Gilad Rosner & Andrew McStay - 2021 - Big Data and Society 8 (1).
    This article examines the social acceptability and governance of emotional artificial intelligence in children’s toys and other child-oriented devices. To explore this, it conducts interviews with stakeholders with a professional interest in emotional AI, toys, children and policy to consider implications of the usage of emotional AI in children’s toys and services. It also conducts a demographically representative UK national survey to ascertain parental perspectives on networked toys that utilise data about emotions. The article highlights disquiet about (...)
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  38.  19
    Comparing Artificial, Animal and Scientific Intelligence: A Dialogue with Giuseppe Longo.Andrea Angelini - 2022 - Theory, Culture and Society 39 (7-8):71-97.
    The most recent tool for acting on the world, the exosomatization of cognitive activities, is often considered an autonomous and objective replacement of knowledge construction. We show the intrinsic limits of the mechanistic myths in AI, from classical to Deep Learning techniques, and its relation to the human construction of sense. Human activities in a changing ecosystem – in their somatic and sensible dimensionalities proper to any living experiences – are at the core of our analysis. By this, we stress (...)
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  39.  29
    Personal choices and situated data: Privacy negotiations and the acceptance of household Intelligent Personal Assistants.Anouk Mols & Jason Pridmore - 2020 - Big Data and Society 7 (1).
    The emergence of personal assistants in the form of smart speakers has begun to significantly alter people’s everyday experiences with technology. The rate at which household Intelligent Personal Assistants such as Amazon’s Echo and Google Home emerged in household spaces has been rapid. They have begun to move human–computer interaction from text-based to voice-activated input, offering a multiplicity of features through speech. The supporting infrastructure connects with artificial intelligence and the internet of things, allowing digital interfaces with domestic (...)
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  40.  45
    From big data epistemology to AI politics: rescuing the public dimension over data-driven technologies.Stefano Calzati - 2023 - Journal of Information, Communication and Ethics in Society 21 (3):358-372.
    The purpose of this paper is to explore the epistemological tensions embedded within big data and data-driven technologies to advance a socio-political reconsideration of the public dimension in the assessment of their implementation.,This paper builds upon (and revisits) the European Union’s (EU) normative understanding of artificial intelligence (AI) and data-driven technologies, blending reflections rooted in philosophy of technology with issues of democratic participation in tech-related matters.,This paper proposes the conceptual design of sectorial and/or local-level e-participation (...)
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  41.  14
    The application of artificial intelligence assistant to deep learning in teachers' teaching and students' learning processes.Yi Liu, Lei Chen & Zerui Yao - 2022 - Frontiers in Psychology 13.
    With the emergence of big data, cloud computing, and other technologies, artificial intelligence technology has set off a new wave in the field of education. The application of AI technology to deep learning in university teachers' teaching and students' learning processes is an innovative way to promote the quality of teaching and learning. This study proposed the deep learning-based assessment to measure whether students experienced an improvement in terms of their mastery of knowledge, development of abilities, and (...)
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  42.  53
    An invitation to critical social science of big data: from critical theory and critical research to omniresistance.Ulaş Başar Gezgin - 2020 - AI and Society 35 (1):187-195.
    How a social science of big data would look like? In this article, we exemplify such a social science through a number of cases. We start our discussion with the epistemic qualities of big data. We point out to the fact that contrary to the big data champions, big data is neither new nor a miracle without any error nor reliable and rigorous as assumed by its cheer leaders. Secondly, we identify three types of big (...): natural big data, artificial big data and human big data. We present and discuss in what ways they are similar and in what other ways they differ. The assumption of a homogenous big data in fact misleads the relevant discussions. Thirdly, we extended 3 Vs of the big data and add veracity with reference to other researchers and violability which is the current author’s proposal. We explain why the trinity of Vs is insufficient to characterize big data. Instead, a quintinity is proposed. Fourthly, we develop an economic analogy to discuss the notions of data production, data consumption, data colonialism, data activism, data revolution, etc. In this context, undertaking a Marxist approach, we explain what we mean by data fetishism. Fifthly, we reflect on the implications of growing up with big data, offering a new research area which is called as developmental psychology of big data. Finally, we sketch data resistance and the newly proposed notion of omniresistance, i.e. resisting anywhere at any occasion against the big brother watching us anywhere and everywhere. (shrink)
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  43.  39
    The Epistemological Consequences of Artificial Intelligence, Precision Medicine, and Implantable Brain-Computer Interfaces.Ian Stevens - 2024 - Voices in Bioethics 10.
    ABSTRACT I argue that this examination and appreciation for the shift to abductive reasoning should be extended to the intersection of neuroscience and novel brain-computer interfaces too. This paper highlights the implications of applying abductive reasoning to personalized implantable neurotechnologies. Then, it explores whether abductive reasoning is sufficient to justify insurance coverage for devices absent widespread clinical trials, which are better applied to one-size-fits-all treatments. INTRODUCTION In contrast to the classic model of randomized-control trials, often with a large number of (...)
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  44.  46
    General Systems Theory and Creative Artificial Intelligence.Зеленский А.А Грибков А.А. - 2023 - Philosophy and Culture (Russian Journal) 11:32-44.
    The article analyzes the possibilities and limitations of artificial intelligence. The article considers the subjectivity of artificial intelligence, determines its necessity for solving intellectual problems depending on the possibility of representing the real world as a deterministic system. Methodological limitations of artificial intelligence, which is based on the use of big data technologies, are stated. These limitations cause the impossibility of forming a holistic representation of the objects of cognition and the world as (...)
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    Big Data Justice: A Case for Regulating The Global Information Commons.Kai Spiekermann, Adam Slavny, David V. Axelsen & Holly Lawford-Smith - 2021 - Journal of Politics 83 (2):577-588.
    The advent of artificial intelligence (AI) challenges political theorists to think about data ownership and policymakers to regulate the collection and use of public data. AI producers benefit from free public data for training their systems while retaining the profits. We argue against the view that the use of public data must be free. The proponents of unconstrained use point out that consuming data does not diminish its quality and that information is in (...)
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    Big Data.Xin Wei Sha & Gabriele Carotti-Sha - 2023 - AI and Society 38 (6):2705-2708.
  47.  35
    How to translate artificial intelligence? Myths and justifications in public discourse.Kevin Morin, Marius Senneville & Jonathan Roberge - 2020 - Big Data and Society 7 (1).
    Automated technologies populating today’s online world rely on social expectations about how “smart” they appear to be. Algorithmic processing, as well as bias and missteps in the course of their development, all come to shape a cultural realm that in turn determines what they come to be about. It is our contention that a robust analytical frame could be derived from culturally driven Science and Technology Studies while focusing on Callon’s concept of translation. Excitement and apprehensions must find a specific (...)
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    Perspectives of patients and clinicians on big data and AI in health: a comparative empirical investigation.Patrik Hummel, Matthias Braun, Serena Bischoff, David Samhammer, Katharina Seitz, Peter A. Fasching & Peter Dabrock - 2024 - AI and Society 39 (6):2973-2987.
    Background Big data and AI applications now play a major role in many health contexts. Much research has already been conducted on ethical and social challenges associated with these technologies. Likewise, there are already some studies that investigate empirically which values and attitudes play a role in connection with their design and implementation. What is still in its infancy, however, is the comparative investigation of the perspectives of different stakeholders. Methods To explore this issue in a multi-faceted manner, we (...)
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    Privacy and artificial intelligence: challenges for protecting health information in a new era.Blake Murdoch - 2021 - BMC Medical Ethics 22 (1):1-5.
    BackgroundAdvances in healthcare artificial intelligence (AI) are occurring rapidly and there is a growing discussion about managing its development. Many AI technologies end up owned and controlled by private entities. The nature of the implementation of AI could mean such corporations, clinics and public bodies will have a greater than typical role in obtaining, utilizing and protecting patient health information. This raises privacy issues relating to implementation and data security. Main bodyThe first set of concerns includes access, (...)
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  50. AI-Assisted Decision-making in Healthcare: The Application of an Ethics Framework for Big Data in Health and Research.Tamra Lysaght, Hannah Yeefen Lim, Vicki Xafis & Kee Yuan Ngiam - 2019 - Asian Bioethics Review 11 (3):299-314.
    Artificial intelligence is set to transform healthcare. Key ethical issues to emerge with this transformation encompass the accountability and transparency of the decisions made by AI-based systems, the potential for group harms arising from algorithmic bias and the professional roles and integrity of clinicians. These concerns must be balanced against the imperatives of generating public benefit with more efficient healthcare systems from the vastly higher and accurate computational power of AI. In weighing up these issues, this paper applies (...)
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