Results for 'Machine psychology'

998 found
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  1.  31
    Social Psychology and the Comic-Book Superhero: A Darwinian Approach.James Carney, Robin Dunbar, Anna Machin & Tamás Dávid-Barrett - 2014 - Philosophy and Literature 38 (1):195-215.
    One of the more compelling features of Denis Dutton’s The Art Instinct is its theoretical parsimony. Utilizing what essentially amounts to one explanatory principle—that of Darwinian selection—Dutton advances a theory of aesthetics that is at once general enough to account for cross-cultural variations in artistic production and sufficiently nuanced to promote insights into individual artworks. In doing this, Dutton’s work could not offer a greater contrast to some of the more vocal trends in contemporary aesthetic theory, where ponderous theorizing and (...)
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  2.  15
    Identification and Description of Novel Mood Profile Clusters.L. Parsons-Smith Renée, C. Terry Peter & Machin M. Anthony - 2017 - Frontiers in Psychology 8.
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  3. The Passions of the soul and Descartes’s machine psychology.Gary Hatfield - 2007 - Studies in History and Philosophy of Science Part A 38 (1):1-35.
    Descartes developed an elaborate theory of animal physiology that he used to explain functionally organized, situationally adapted behavior in both human and nonhuman animals. Although he restricted true mentality to the human soul, I argue that he developed a purely mechanistic (or material) ‘psychology’ of sensory, motor, and low-level cognitive functions. In effect, he sought to mechanize the offices of the Aristotelian sensitive soul. He described the basic mechanisms in the Treatise on man, which he summarized in the Discourse. (...)
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  4.  17
    Machine Learning in Psychometrics and Psychological Research.Graziella Orrù, Merylin Monaro, Ciro Conversano, Angelo Gemignani & Giuseppe Sartori - 2020 - Frontiers in Psychology 10:492685.
    Recent controversies about the level of replicability of behavioral research analyzed using statistical inference have cast interest in developing more efficient techniques for analyzing the results of psychological experiments. Here we claim that complementing the analytical workflow of psychological experiments with Machine Learning-based analysis will both maximize accuracy and minimize replicability issues. As compared to statistical inference, ML analysis of experimental data is model agnostic and primarily focused on prediction rather than inference. We also highlight some potential pitfalls resulting (...)
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  5. Calculating Machines or Leaky Jars? The Moral Psychology of Plato's Gorgias.Gabriela Roxana Carone - 2004 - Oxford Studies in Ancient Philosophy 26:55-96.
  6. Calculating Machines or Leaky Jars? The Moral Psychology of Plato's Gorgias.Gabriela Roxana Carone - 2004 - In David Sedley (ed.), Oxford Studies in Ancient Philosophy Xxvi: Summer 2004. Oxford University Press.
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  7. 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 between September 14th (...)
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  8.  27
    Machine Meets Man: Evaluating the Psychological Reality of Corpus-based Probabilistic Models.Dagmar Divjak, Ewa Dąbrowska & Antti Arppe - 2016 - Cognitive Linguistics 27 (1):1-33.
    Name der Zeitschrift: Cognitive Linguistics Jahrgang: 27 Heft: 1 Seiten: 1-33.
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  9.  93
    Combining psychological models with machine learning to better predict people’s decisions.Avi Rosenfeld, Inon Zuckerman, Amos Azaria & Sarit Kraus - 2012 - Synthese 189 (S1):81-93.
    Creating agents that proficiently interact with people is critical for many applications. Towards creating these agents, models are needed that effectively predict people's decisions in a variety of problems. To date, two approaches have been suggested to generally describe people's decision behavior. One approach creates a-priori predictions about people's behavior, either based on theoretical rational behavior or based on psychological models, including bounded rationality. A second type of approach focuses on creating models based exclusively on observations of people's behavior. At (...)
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  10. Psychological hedonism, evolutionary biology, and the experience machine.John Lemos - 2004 - Philosophy of the Social Sciences 34 (4):506-526.
    In the second half of their recent, critically acclaimed book Unto Others: The Evolution and Psychology of Unselfish Behavior , Elliott Sober and David Sloan Wilson discuss psychological hedonism. This is the view that avoiding our own pain and increasing our own pleasure are the only ultimate motives people have. They argue that none of the traditional philosophical arguments against this view are good, and they go on to present theirownevolutionary biological argument against it. Interestingly, the first half of (...)
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  11.  14
    Commonsense psychology in human infants and machines.Gala Stojnić, Kanishk Gandhi, Shannon Yasuda, Brenden M. Lake & Moira R. Dillon - 2023 - Cognition 235 (C):105406.
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  12.  16
    Abnormal psychological performance as potential marker for high risk of internet gaming disorder: An eye-tracking study and support vector machine analysis.Shuai Wang, Jialing Li, Siyu Wang, Wei Wang, Can Mi, Wenjing Xiong, Zhengjia Xu, Longxing Tang & Yanzhang Li - 2022 - Frontiers in Psychology 13.
    Individuals with high risk of internet gaming disorder showed abnormal psychological performances in response inhibition, impulse control, and emotion regulation, and are considered the high-risk stage of internet gaming disorder. The identification of this population mainly relies on clinical scales, which are less accurate. This study aimed to explore whether these performances have highly accurate for discriminating HIGD from low-risk ones. Eye tracking based anti-saccade task, Barratt impulsiveness scale, and Wong and Law emotional intelligence scale were used to evaluate psychological (...)
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  13.  17
    Identifying Predictors of Psychological Distress During COVID-19: A Machine Learning Approach.Tracy A. Prout, Sigal Zilcha-Mano, Katie Aafjes-van Doorn, Vera Békés, Isabelle Christman-Cohen, Kathryn Whistler, Thomas Kui & Mariagrazia Di Giuseppe - 2020 - Frontiers in Psychology 11.
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  14.  85
    Gender Difference in Psychological, Cognitive, and Behavioral Patterns Among University Students During COVID-19: A Machine Learning Approach.Yijun Zhao, Yi Ding, Yangqian Shen & Wei Liu - 2022 - Frontiers in Psychology 13.
    The COVID-19 pandemic affects all population segments and is especially detrimental to university students because social interaction is critical for a rewarding campus life and valuable learning experiences. In particular, with the suspension of in-person activities and the adoption of virtual teaching modalities, university students face drastic changes in their physical activities, academic careers, and mental health. Our study applies a machine learning approach to explore the gender differences among U.S. university students in response to the global pandemic. Leveraging (...)
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  15.  70
    The illusory triumph of machine over mind: Wegner's eliminativism and the real promise of psychology.Anthony I. Jack & Philip Robbins - 2004 - Behavioral and Brain Sciences 27 (5):665-666.
    Wegner's thesis that the experience of will is an illusion is not just wrong, it is an impediment to progress in psychology. We discuss two readings of Wegner's thesis and find that neither can motivate his larger conclusion. Wegner thinks science requires us to dismiss our experiences. Its real promise is to help us to make better sense of them.
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  16.  45
    Are Animals Just Noisy Machines?: Louis Boutan and the Co-invention of Animal and Child Psychology in the French Third Republic.Marion Thomas - 2005 - Journal of the History of Biology 38 (3):425-460.
    Historians of science have only just begun to sample the wealth of different approaches to the study of animal behavior undertaken in the twentieth century. To date, more attention has been given to Lorenzian ethology and American behaviorism than to other work and traditions, but different approaches are equally worthy of the historian's attention, reflecting not only the broader range of questions that could be asked about animal behavior and the "animal mind" but also the different contexts in which these (...)
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  17. Machines as Moral Patients We Shouldn’t Care About : The Interests and Welfare of Current Machines.John Basl - 2014 - Philosophy and Technology 27 (1):79-96.
    In order to determine whether current (or future) machines have a welfare that we as agents ought to take into account in our moral deliberations, we must determine which capacities give rise to interests and whether current machines have those capacities. After developing an account of moral patiency, I argue that current machines should be treated as mere machines. That is, current machines should be treated as if they lack those capacities that would give rise to psychological interests. Therefore, they (...)
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  18.  18
    In Pursuit of Precision: The Calibration of Minds and Machines in Late Nineteenth-century Psychology.Ruth Benschop & Douwe Draaisma - 2000 - Annals of Science 57 (1):1-25.
    A prominent feature of late nineteenth-century psychology was its intense preoccupation with precision. Precision was at once an ideal and an argument: the quest for precision helped psychology to establish its status as a mature science, sharing a characteristic concern with the natural sciences. We will analyse how psychologists set out to produce precision in 'mental chronometry', the measurement of the duration of psychological processes. In his Leipzig laboratory, Wundt inaugurated an elaborate research programme on mental chronometry. We (...)
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  19.  19
    Programming Machine Ethics.Luís Moniz Pereira & Ari Saptawijaya - 2016 - Cham: Springer Verlag. Edited by Ari Saptawijaya.
    Source: "This book addresses the fundamentals of machine ethics. It discusses abilities required for ethical machine reasoning and the programming features that enable them. It connects ethics, psychological ethical processes, and machine implemented procedures. From a technical point of view, the book uses logic programming and evolutionary game theory to model and link the individual and collective moral realms. It also reports on the results of experiments performed using several model implementations. Opening specific and promising inroads into (...)
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  20. Can Machines Read our Minds?Christopher Burr & Nello Cristianini - 2019 - Minds and Machines 29 (3):461-494.
    We explore the question of whether machines can infer information about our psychological traits or mental states by observing samples of our behaviour gathered from our online activities. Ongoing technical advances across a range of research communities indicate that machines are now able to access this information, but the extent to which this is possible and the consequent implications have not been well explored. We begin by highlighting the urgency of asking this question, and then explore its conceptual underpinnings, in (...)
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  21.  42
    The AI Commander Problem: Ethical, Political, and Psychological Dilemmas of Human-Machine Interactions in AI-enabled Warfare.James Johnson - 2022 - Journal of Military Ethics 21 (3):246-271.
    Can AI solve the ethical, moral, and political dilemmas of warfare? How is artificial intelligence (AI)-enabled warfare changing the way we think about the ethical-political dilemmas and practice of war? This article explores the key elements of the ethical, moral, and political dilemmas of human-machine interactions in modern digitized warfare. It provides a counterpoint to the argument that AI “rational” efficiency can simultaneously offer a viable solution to human psychological and biological fallibility in combat while retaining “meaningful” human control (...)
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  22.  94
    Physics, machines, and the hard problem.D. Bilodeau - 1996 - Journal of Consciousness Studies 3 (5-6):386-401.
    The ‘hard problem’ of the origin of phenomenal consciousness in a physical universe is aggravated by a simplistic and uncritical concept of the physical realm which still predominates in much discussion of the subject. David Chalmers is correct in claiming that phenomenal experience is logically independent of a physical description of the world, but his proposal for a ‘natural supervenience’ of experience on a physical substrate is misguided. His statements about machine consciousness and the role of information are especially (...)
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  23. Choosing prediction over explanation in psychology: lessons from machine learning.T. Yarkoni & J. Westfall - 2017 - Perspective on Psychological Science 12 (6):1100-1122.
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  24. Building machines that learn and think like people.Brenden M. Lake, Tomer D. Ullman, Joshua B. Tenenbaum & Samuel J. Gershman - 2017 - Behavioral and Brain Sciences 40.
    Recent progress in artificial intelligence has renewed interest in building systems that learn and think like people. Many advances have come from using deep neural networks trained end-to-end in tasks such as object recognition, video games, and board games, achieving performance that equals or even beats that of humans in some respects. Despite their biological inspiration and performance achievements, these systems differ from human intelligence in crucial ways. We review progress in cognitive science suggesting that truly human-like learning and thinking (...)
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  25. Machine models for cognitive science.Raymond J. Nelson - 1987 - Philosophy of Science 54 (September):391-408.
    Introduction. During the past two decades philosophers of psychology have considered a large variety of computational models for philosophy of mind and more recently for cognitive science. Among the suggested models are computer programs, Turing machines, pushdown automata, linear bounded automata, finite state automata and sequential machines. Many philosophers have found finite state automata models to be the most appealing, for various reasons, although there has been no shortage of defenders of programs and Turing machines. A paper by Arthur (...)
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  26.  18
    Considerations for the ethical implementation of psychological assessment through social media via machine learning.Megan N. Fleming - 2021 - Ethics and Behavior 31 (3):181-192.
    ABSTRACT The ubiquity of social media usage has led to exciting new technologies such as machine learning. Machine learning is poised to change many fields of health, including psychology. The wealth of information provided by each social media user in combination with machine-learning technologies may pave the way for automated psychological assessment and diagnosis. Assessment of individuals’ social media profiles using machine-learning technologies for diagnosis and screening confers many benefits ; however, the implementation of these (...)
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  27.  60
    Social machines: a philosophical engineering.Spyridon Orestis Palermos - 2017 - Phenomenology and the Cognitive Sciences 16 (5):953-978.
    In Weaving the Web, Berners-Lee defines Social Machines as biotechnologically hybrid Web-processes on the basis of which, “high-level activities, which have occurred just within one human’s brain, will occur among even larger more interconnected groups of people acting as if the shared a larger intuitive brain”. The analysis and design of Social Machines has already started attracting considerable attention both within the industry and academia. Web science, however, is still missing a clear definition of what a Social Machine is, (...)
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  28.  54
    Machine discovery.Herbert Simon - 1995 - Foundations of Science 1 (2):171-200.
    Human and machine discovery are gradual problem-solving processes of searching large problem spaces for incompletely defined goal objects. Research on problem solving has usually focused on search of an instance space (empirical exploration) and a hypothesis space (generation of theories). In scientific discovery, search must often extend to other spaces as well: spaces of possible problems, of new or improved scientific instruments, of new problem representations, of new concepts, and others. This paper focuses especially on the processes for finding (...)
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  29.  14
    Darwin machines and the nature of knowledge.Henry C. Plotkin - 1994 - Cambridge, Mass.: Harvard University Press.
    Bringing together evolutionary biology, psychology, and philosophy, Henry Plotkin presents a new science of knowledge, one that traces an unbreakable link between instinct and our ability to know.
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  30.  10
    What Machine Learning Can Tell Us About the Role of Language Dominance in the Diagnostic Accuracy of German LITMUS Non-word and Sentence Repetition Tasks.Lina Abed Ibrahim & István Fekete - 2019 - Frontiers in Psychology 9.
    This study investigates the performance of 21 monolingual and 56 bilingual children aged 5;6-9;0 on German-LITMUS-sentence-repetition (SRT; Hamann et al., 2013) and nonword-repetition-tasks (NWRT; Grimm et al., 2014), which were constructed according to the LITMUS-principles (Language Impairment Testing in Multilingual Settings; Armon-Lotem et al., 2015). Both tasks incorporate complex structures shown to be cross-linguistically challenging for children with Specific Language Impairment (SLI) and aim at minimizing bias against bilingual children while still being indicative of the presence of language impairment across (...)
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  31.  34
    Machine learning and essentialism.Kristina Šekrst & Sandro Skansi - 2022 - Zagadnienia Filozoficzne W Nauce 73:171-196.
    Machine learning and essentialism have been connected in the past by various researchers, in order to state that the main paradigm in machine learning processes is equivalent to choosing the “essential” attributes for the machine to search for. Our goal in this paper is to show that there are connections between machine learning and essentialism, but only for some kinds of machine learning, and often not including deep learning methods. Similarity-based approaches, more connected to the (...)
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  32. Machine morality, moral progress, and the looming environmental disaster.Ben Kenward & Thomas Sinclair - forthcoming - Cognitive Computation and Systems.
    The creation of artificial moral systems requires us to make difficult choices about which of varying human value sets should be instantiated. The industry-standard approach is to seek and encode moral consensus. Here we argue, based on evidence from empirical psychology, that encoding current moral consensus risks reinforcing current norms, and thus inhibiting moral progress. However, so do efforts to encode progressive norms. Machine ethics is thus caught between a rock and a hard place. The problem is particularly (...)
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  33.  88
    The Machine Scenario: A Computational Perspective on Alternative Representations of Indeterminism.Vincent Grandjean & Matteo Pascucci - 2020 - Minds and Machines 31 (1):59-74.
    In philosophical logic and metaphysics there is a long-standing debate around the most appropriate structures to represent indeterministic scenarios concerning the future. We reconstruct here such a debate in a computational setting, focusing on the fundamental difference between moment-based and history-based structures. Our presentation is centered around two versions of an indeterministic scenario in which a programmer wants a machine to perform a given task at some point after a specified time. One of the two versions includes an assumption (...)
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  34.  52
    Intentional machines: A defence of trust in medical artificial intelligence.Georg Starke, Rik van den Brule, Bernice Simone Elger & Pim Haselager - 2021 - Bioethics 36 (2):154-161.
    Trust constitutes a fundamental strategy to deal with risks and uncertainty in complex societies. In line with the vast literature stressing the importance of trust in doctor–patient relationships, trust is therefore regularly suggested as a way of dealing with the risks of medical artificial intelligence (AI). Yet, this approach has come under charge from different angles. At least two lines of thought can be distinguished: (1) that trusting AI is conceptually confused, that is, that we cannot trust AI; and (2) (...)
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  35. Imagining a non-biological machine as a legal person.David J. Calverley - 2008 - AI and Society 22 (4):523-537.
    As non-biological machines come to be designed in ways which exhibit characteristics comparable to human mental states, the manner in which the law treats these entities will become increasingly important both to designers and to society at large. The direct question will become whether, given certain attributes, a non-biological machine could ever be viewed as a legal person. In order to begin to understand the ramifications of this question, this paper starts by exploring the distinction between the related concepts (...)
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  36.  10
    Analyzing Machine‐Learned Representations: A Natural Language Case Study.Ishita Dasgupta, Demi Guo, Samuel J. Gershman & Noah D. Goodman - 2020 - Cognitive Science 44 (12):e12925.
    As modern deep networks become more complex, and get closer to human‐like capabilities in certain domains, the question arises as to how the representations and decision rules they learn compare to the ones in humans. In this work, we study representations of sentences in one such artificial system for natural language processing. We first present a diagnostic test dataset to examine the degree of abstract composable structure represented. Analyzing performance on these diagnostic tests indicates a lack of systematicity in representations (...)
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  37.  96
    Why machines cannot feel.Rosemarie Velik - 2010 - Minds and Machines 20 (1):1-18.
    For a long time, emotions have been ignored in the attempt to model intelligent behavior. However, within the last years, evidence has come from neuroscience that emotions are an important facet of intelligent behavior being involved into cognitive problem solving, decision making, the establishment of social behavior, and even conscious experience. Also in research communities like software agents and robotics, an increasing number of researchers start to believe that computational models of emotions will be needed to design intelligent systems. Nevertheless, (...)
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  38.  22
    Emotional Machines: Perspectives from Affective Computing and Emotional Human-Machine Interaction.Catrin Misselhorn, Tom Poljanšek, Tobias Störzinger & Maike Klein (eds.) - 2023 - Springer Fachmedien Wiesbaden.
    Can machines simulate, express or even have emotions? Is it a good to build such machines? How do humans react emotionally to them and how should such devices be treated from a moral point of view? This volume addresses these and related questions by bringing together perspectives from affective computing and emotional human-machine interaction, combining technological approaches with those from the humanities and social sciences. It thus relates disciplines such as philosophy, computer science, technology, psychology, sociology, design, and (...)
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  39. Engineered Wisdom for Learning Machines.Brett Karlan & Colin Allen - 2024 - Journal of Experimental and Theoretical Artificial Intelligence 36 (2):257-272.
    We argue that the concept of practical wisdom is particularly useful for organizing, understanding, and improving human-machine interactions. We consider the relationship between philosophical analysis of wisdom and psychological research into the development of wisdom. We adopt a practical orientation that suggests a conceptual engineering approach is needed, where philosophical work involves refinement of the concept in response to contributions by engineers and behavioral scientists. The former are tasked with encoding as much wise design as possible into machines themselves, (...)
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  40.  7
    Anthropomorphising Machines and Computerising Minds: The Crosswiring of Languages between Artificial Intelligence and Brain & Cognitive Sciences.Luciano Floridi & Anna C. Nobre - 2024 - Minds and Machines 34 (1):1-9.
    The article discusses the process of “conceptual borrowing”, according to which, when a new discipline emerges, it develops its technical vocabulary also by appropriating terms from other neighbouring disciplines. The phenomenon is likened to Carl Schmitt’s observation that modern political concepts have theological roots. The authors argue that, through extensive conceptual borrowing, AI has ended up describing computers anthropomorphically, as computational brains with psychological properties, while brain and cognitive sciences have ended up describing brains and minds computationally and informationally, as (...)
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  41.  8
    Programming Machine Ethics.Luís Moniz Pereira - 2016 - Cham: Imprint: Springer. Edited by Ari Saptawijaya.
    This book addresses the fundamentals of machine ethics. It discusses abilities required for ethical machine reasoning and the programming features that enable them. It connects ethics, psychological ethical processes, and machine implemented procedures. From a technical point of view, the book uses logic programming and evolutionary game theory to model and link the individual and collective moral realms. It also reports on the results of experiments performed using several model implementations. Opening specific and promising inroads into the (...)
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  42.  19
    The Ghost in the Machine.Arthur Koestler - 1967 - Macmillan.
    In The Sleepwalkers and The Act of Creation Arthur Koestler provided pioneering studies of scientific discovery and artistic inspiration, the twin pinnacles of human achievement. The Ghost in the Machine looks at the dark side of the coin: our terrible urge to self-destruction... Could the human species be a gigantic evolutionary mistake? To answer that startling question Koestler examines how experts on evolution and psychology all too often write about people with an 'antiquated slot-machine model based on (...)
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  43.  14
    Machines in the Triangle: a Pragmatic Interactive Approach to Information.Nadine Schumann & Yaoli Du - 2022 - Philosophy and Technology 35 (2):1-17.
    A recurrent theme of human–machine interaction is how interaction is defined and what kind of information is relevant for successful communication. In accordance with the theoretical strategies of social cognition and technical philosophy, we propose a pragmatic interactive approach, to understand the concept of information in human–machine interaction. We start with the investigation of interpersonal interaction and human–machine interaction by concerning triangulation as guiding principle. To illustrate human–machine interaction, we will mainly focus on the interactive relationship (...)
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  44.  21
    Diversity in sociotechnical machine learning systems.Maria De-Arteaga & Sina Fazelpour - 2022 - Big Data and Society 9 (1).
    There has been a surge of recent interest in sociocultural diversity in machine learning research. Currently, however, there is a gap between discussions of measures and benefits of diversity in machine learning, on the one hand, and the broader research on the underlying concepts of diversity and the precise mechanisms of its functional benefits, on the other. This gap is problematic because diversity is not a monolithic concept. Rather, different concepts of diversity are based on distinct rationales that (...)
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  45.  41
    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 help us (...)
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  46. Why a Machine Can't Feel Pain.Daniel Dennett - 1978 - In Daniel C. Dennett (ed.), Brainstorms: Philosophical Essays on Mind and Psychology. Cambridge, Massachusetts: Bradford Books.
     
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  47.  56
    Machine understanding and the chinese room.Natika Newton - 1989 - Philosophical Psychology 2 (2):207-15.
    John Searle has argued that one can imagine embodying a machine running any computer program without understanding the symbols, and hence that purely computational processes do not yield understanding. The disagreement this argument has generated stems, I hold, from ambiguity in talk of 'understanding'. The concept is analysed as a relation between subjects and symbols having two components: a formal and an intentional. The central question, then becomes whether a machine could possess the intentional component with or without (...)
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  48. The Limits of Machine Intelligence.Henry Shevlin, Karina Vold, Matthew Crosby & Marta Halina - 2019 - EMBO Reports 49177 (20).
    Despite there being little consensus on what intelligence is or how to measure it, the media and the public have become increasingly preoccupied with the concept owing to recent accomplishments in machine learning and research on artificial intelligence (AI). Governments and corporations are investing billions of dollars to fund researchers who are keen to produce an ever‐expanding range of artificial intelligent systems. More than 30 countries have announced such research initiatives over the past 3 years 1. For example, the (...)
     
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  49. The experience machine and the expertise defense.Guido Löhr - 2019 - Philosophical Psychology 32 (2):257-273.
    Recent evidence suggests that participants without extensive training in philosophy (so-called lay people) have difficulties responding consistently when confronted with Robert Nozick’s Experience Machine thought experiment. For example, some of the participants who reject the experience machine for themselves would still advise a stranger to enter the machine permanently. This and similar findings have been interpreted as evidence for implicit biases that prevent lay people from making rational decisions about whether the experience machine is preferable to (...)
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  50.  23
    Linking Human And Machine Behavior: A New Approach to Evaluate Training Data Quality for Beneficial Machine Learning.Thilo Hagendorff - 2021 - Minds and Machines 31 (4):563-593.
    Machine behavior that is based on learning algorithms can be significantly influenced by the exposure to data of different qualities. Up to now, those qualities are solely measured in technical terms, but not in ethical ones, despite the significant role of training and annotation data in supervised machine learning. This is the first study to fill this gap by describing new dimensions of data quality for supervised machine learning applications. Based on the rationale that different social and (...)
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