Results for 'Machine implementation'

965 found
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  1.  30
    Landscape of Machine Implemented Ethics.Vivek Nallur - 2020 - Science and Engineering Ethics 26 (5):2381-2399.
    This paper surveys the state-of-the-art in machine ethics, that is, considerations of how to implement ethical behaviour in robots, unmanned autonomous vehicles, or software systems. The emphasis is on covering the breadth of ethical theories being considered by implementors, as well as the implementation techniques being used. There is no consensus on which ethical theory is best suited for any particular domain, nor is there any agreement on which technique is best placed to implement a particular theory. Another (...)
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  2. Political Inequality and the 'Super-Rich': Their Money or (some of) Their Political Rights.Dean J. Machin - 2013 - Res Publica 19 (2):121-139.
    The ability of very wealthy individuals (or, as I will call them, the ‘super-rich’) to turn their economic power into political power has been—and remains—an important cause of political inequality. In response, this paper advocates an original solution. Rather than solving the problem through implementing a comprehensive conception of political equality, or through enforcing complex rules about financial disclosure etc., I argue that we should impose a choice on the super-rich. The super-rich must choose between (i) forfeiting the things that (...)
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  3.  42
    Of Models and Machines: Implementing Bounded Rationality.Stephanie Dick - 2015 - Isis 106 (3):623-634.
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  4. (1 other version)Artificial virtuous agents: from theory to machine implementation.Jakob Stenseke - 2021 - AI and Society:1-20.
    Virtue ethics has many times been suggested as a promising recipe for the construction of artificial moral agents due to its emphasis on moral character and learning. However, given the complex nature of the theory, hardly any work has de facto attempted to implement the core tenets of virtue ethics in moral machines. The main goal of this paper is to demonstrate how virtue ethics can be taken all the way from theory to machine implementation. To achieve this (...)
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  5.  33
    Expanding Nallur's Landscape of Machine Implemented Ethics.William A. Bauer - 2020 - Science and Engineering Ethics 26 (5):2401-2410.
    What ethical principles should autonomous machines follow? How do we implement these principles, and how do we evaluate these implementations? These are some of the critical questions Vivek Nallur asks in his essay “Landscape of Machine Implemented Ethics (2020).” He provides a broad, insightful survey of answers to these questions, especially focused on the implementation question. In this commentary, I will first critically summarize the main themes and conclusions of Nallur’s essay and then expand upon the landscape that (...)
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  6.  18
    The misleading nature of flow charts and diagrams in organizational communication: The case of performance management of preschools in Sweden.David Machin & Per Ledin - 2020 - Semiotica 2020 (236-237):405-425.
    It has become common to find diagrams and flow-charts used in our organizations to illustrate the nature of processes, what is involved and how it happens, or to show how parts of the organization interrelate to each other and work together. Such diagrams are used as they are thought to help visualization and simplify things in order to represent the essence of a particular situation, the core features. In this paper, using a social semiotic approach, we show that we need (...)
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  7.  51
    Towards an Actual Gödel Machine Implementation: a Lesson in Self-Reflective Systems.Bas R. Steunebrink & Jã¼Rgen Schmidhuber - 2012 - In Pei Wang & Ben Goertzel (eds.), Theoretical Foundations of Artificial General Intelligence. Springer. pp. 173--195.
  8.  12
    Correction to: Expanding Nallur’s Landscape of Machine Implemented Ethics.William A. Bauer - 2020 - Science and Engineering Ethics 26 (5):2411-2411.
    Due to an unfortunate miscommunication with the copy editor an important reference was omitted from this recently published article. The reference that should be included is.
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  9.  39
    Virtual Machines and Real Implementations.Tyler Millhouse - 2018 - Minds and Machines 28 (3):465-489.
    What does it take to implement a computer? Answers to this question have often focused on what it takes for a physical system to implement an abstract machine. As Joslin observes, this approach neglects cases of software implementation—cases where one machine implements another by running a program. These cases, Joslin argues, highlight serious problems for mapping accounts of computer implementation—accounts that require a mapping between elements of a physical system and elements of an abstract machine. (...)
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  10. Implementations in Machine Ethics: A Survey.Suzanne Tolmeijer, Markus Kneer, Cristina Sarasua, Markus Christen & Abraham Bernstein - 2020 - ACM Computing Surveys 53 (6):1–38.
    Increasingly complex and autonomous systems require machine ethics to maximize the benefits and minimize the risks to society arising from the new technology. It is challenging to decide which type of ethical theory to employ and how to implement it effectively. This survey provides a threefold contribution. First, it introduces a trimorphic taxonomy to analyze machine ethics implementations with respect to their object (ethical theories), as well as their nontechnical and technical aspects. Second, an exhaustive selection and description (...)
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  11. Implementation of Moral Uncertainty in Intelligent Machines.Kyle Bogosian - 2017 - Minds and Machines 27 (4):591-608.
    The development of artificial intelligence will require systems of ethical decision making to be adapted for automatic computation. However, projects to implement moral reasoning in artificial moral agents so far have failed to satisfactorily address the widespread disagreement between competing approaches to moral philosophy. In this paper I argue that the proper response to this situation is to design machines to be fundamentally uncertain about morality. I describe a computational framework for doing so and show that it efficiently resolves common (...)
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  12.  31
    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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  13.  33
    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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  14.  47
    Embedded Ethics Could Help Implement the Pipeline Model Framework for Machine Learning Healthcare Applications.Amelia Fiske, Daniel Tigard, Ruth Müller, Sami Haddadin, Alena Buyx & Stuart McLennan - 2020 - American Journal of Bioethics 20 (11):32-35.
    The field of artificial intelligence (AI) ethics has exploded in recent years, with countless academics, organizations, and influencers rushing to consider how AI technology can be developed and im...
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  15.  16
    Time-limited trials: A qualitative study exploring the role of time in decision-making on the Intensive Care Unit.Bradley Lonergan, Alexandra Wright, Rachel Markham & Laura Machin - 2020 - Clinical Ethics 15 (1):11-16.
    BackgroundWithholding and withdrawing treatment are deemed ethically equivalent by most Bioethicists, but intensivists often find withdrawing more difficult in practice. This can lead to futile treatment being prolonged. Time-limited trials have been proposed as a way of promoting timely treatment withdrawal whilst giving the patient the greatest chance of recovery. Despite being in UK guidelines, time-limited trials have been infrequently implemented on Intensive Care Units. We will explore the role of time in Intensive Care Unit decision-making and provide a UK (...)
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  16.  78
    The cognitive development of machine consciousness implementations.Raúl Arrabales, Agapito Ledezma & Araceli Sanchis - 2010 - International Journal of Machine Consciousness 2 (2):213-225.
  17. Second Workshop on Implementing Machine Ethics.Vaz Alves Gleifer, Louise Dennis, Michael Fisher, Anthony Behan, Dina Babushkina, Christoph Merdes, Ken Archer, Labhaoise Ní Fhaoláin, Andrew Hines, Loizos Michael, C. Rafael Cardoso, Daniel Ene, Tom Evans, Satwant Kaur, Sarah Carter, Sergio Grancagnolo & Steven Greidinger - unknown
    s for the Second Workshop on Implementing Machine Ethics.
     
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  18.  11
    Analysis of the implications of the Moral Machine project as an implementation of the concept of coherent extrapolated volition for building clustered trust in autonomous machines.Krzysztof Sołoducha - 2022 - Zagadnienia Filozoficzne W Nauce 73:231-255.
    In this paper, we focus on the analysis of Eliezer Yudkowsky’s concept of “coherent extrapolated volition” (CEV) as a response to the need for a post-conventional, persuasive morality that meets the criteria of active trust in the sense of Anthony Giddens, which could be used in the case of autonomous machines. Based on the analysis of the results of the Moral Machine project, we formulate some guidelines for transformation of the idea of a coherent extrapolated volition into the concept (...)
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  19.  12
    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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  20. 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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  21.  7
    (1 other version)Machine translation of expressive means – metaphors.Е. М Хабарова - 2023 - Philosophical Problems of IT and Cyberspace (PhilITandC) 2:108-119.
    Technology has advanced significantly over the past decades. Significant changes have occurred in the field of translation with the development of programs such as Google.translate and Yandex.translator. The presented applications are already being actively implemented in translation agencies to optimize translation activities, where written translations of documents, articles, annotations, etc. must be provided to customers as quick as possible. While working with popular science text, online programs help translators gain time, but this requires to edit the text. The artistic style (...)
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  22. Explainable machine learning practices: opening another black box for reliable medical AI.Emanuele Ratti & Mark Graves - 2022 - AI and Ethics:1-14.
    In the past few years, machine learning (ML) tools have been implemented with success in the medical context. However, several practitioners have raised concerns about the lack of transparency—at the algorithmic level—of many of these tools; and solutions from the field of explainable AI (XAI) have been seen as a way to open the ‘black box’ and make the tools more trustworthy. Recently, Alex London has argued that in the medical context we do not need machine learning tools (...)
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  23.  20
    Supporting Trustworthy AI Through Machine Unlearning.Emmie Hine, Claudio Novelli, Mariarosaria Taddeo & Luciano Floridi - 2024 - Science and Engineering Ethics 30 (5):1-13.
    Machine unlearning (MU) is often analyzed in terms of how it can facilitate the “right to be forgotten.” In this commentary, we show that MU can support the OECD’s five principles for trustworthy AI, which are influencing AI development and regulation worldwide. This makes it a promising tool to translate AI principles into practice. We also argue that the implementation of MU is not without ethical risks. To address these concerns and amplify the positive impact of MU, we (...)
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  24.  52
    Machine learning in healthcare and the methodological priority of epistemology over ethics.Thomas Grote - forthcoming - Inquiry: An Interdisciplinary Journal of Philosophy.
    This paper develops an account of how the implementation of ML models into healthcare settings requires revising the methodological apparatus of philosophical bioethics. On this account, ML models are cognitive interventions that provide decision-support to physicians and patients. Due to reliability issues, opaque reasoning processes, and information asymmetries, ML models pose inferential problems for them. These inferential problems lay the grounds for many ethical problems that currently claim centre-stage in the bioethical debate. Accordingly, this paper argues that the best (...)
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  25. What am I? Virtual machines and the mind/body problem.John L. Pollock - 2008 - Philosophy and Phenomenological Research 76 (2):237–309.
    When your word processor or email program is running on your computer, this creates a "virtual machine” that manipulates windows, files, text, etc. What is this virtual machine, and what are the virtual objects it manipulates? Many standard arguments in the philosophy of mind have exact analogues for virtual machines and virtual objects, but we do not want to draw the wild metaphysical conclusions that have sometimes tempted philosophers in the philosophy of mind. A computer file is not (...)
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  26. Computation, Implementation, Cognition.Oron Shagrir - 2012 - Minds and Machines 22 (2):137-148.
    Putnam (Representations and reality. MIT Press, Cambridge, 1988) and Searle (The rediscovery of the mind. MIT Press, Cambridge, 1992) famously argue that almost every physical system implements every finite computation. This universal implementation claim, if correct, puts at the risk of triviality certain functional and computational views of the mind. Several authors have offered theories of implementation that allegedly avoid the pitfalls of universal implementation. My aim in this paper is to suggest that these theories are still (...)
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  27.  10
    Machine overstrain prediction for early detection and effective maintenance: A machine learning algorithm comparison.Bruno Mota, Pedro Faria & Carlos Ramos - forthcoming - Logic Journal of the IGPL.
    Machine stability and energy efficiency have become major issues in the manufacturing industry, primarily during the COVID-19 pandemic where fluctuations in supply and demand were common. As a result, Predictive Maintenance (PdM) has become more desirable, since predicting failures ahead of time allows to avoid downtime and improves stability and energy efficiency in machines. One type of machine failure stands out due to its impact, machine overstrain, which can occur when machines are used beyond their tolerable limit. (...)
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  28. Moral Machines.Jos De Mul - 2010 - Techné: Research in Philosophy and Technology 14 (3):226-236.
    In spite of the popularity of computer ethics, ICTs appear to undermine our moral autonomy in several ways. This article focuses on the ‘delegation’ of our moral agency to machines. Three stages of delegation are distinguished: implementation of moral values and norms in the design of artefacts, delegation of moral means to machines, and delegation of both moral means and goals to machines. Second, it is argued that the ‘outsourcing’ of moral agency does not necessarily lead to the undermining (...)
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  29.  20
    Implementation of the Spark technique in a matrix distributed computing algorithm.Korhan Cengiz & Ying Wang - 2022 - Journal of Intelligent Systems 31 (1):660-671.
    Two analyzes of Spark engine performance strategies to implement the Spark technique in a matrix distributed computational algorithm, the multiplication of a sparse multiplication operational test model. The dimensions of the two input sparse matrices have been fixed to 30,000 × 30,000, and the density of the input matrix have been changed. The experimental results show that when the density reaches about 0.3, the original dense matrix multiplication performance can outperform the sparse-sparse matrix multiplication, which is basically consistent with the (...)
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  30.  57
    Fairer machine learning in the real world: Mitigating discrimination without collecting sensitive data.Reuben Binns & Michael Veale - 2017 - Big Data and Society 4 (2):205395171774353.
    Decisions based on algorithmic, machine learning models can be unfair, reproducing biases in historical data used to train them. While computational techniques are emerging to address aspects of these concerns through communities such as discrimination-aware data mining and fairness, accountability and transparency machine learning, their practical implementation faces real-world challenges. For legal, institutional or commercial reasons, organisations might not hold the data on sensitive attributes such as gender, ethnicity, sexuality or disability needed to diagnose and mitigate emergent (...)
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  31.  36
    Machine Translation in the Hands of Trainee Translators – an Empirical Study.Joanna Sycz-Opoń & Ksenia Gałuskina - 2017 - Studies in Logic, Grammar and Rhetoric 49 (1):195-212.
    Automated translation is systematically gaining popularity among professional translators, who claim that editing MT output requires less time and effort than translating from scratch. MT technology is also offered in leading translator’s workstations, e.g., SDL Trados Studio, memoQ, Déjà Vu and Wordfast. Therefore, the dilemma arises: should MT be introduced into formal translation training? In order to answer this question, first, it is necessary to understand how trainee translators actually use MT. This study is an attempt to obtain this knowledge. (...)
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  32. A challenge for machine ethics.Ryan Tonkens - 2009 - Minds and Machines 19 (3):421-438.
    That the successful development of fully autonomous artificial moral agents (AMAs) is imminent is becoming the received view within artificial intelligence research and robotics. The discipline of Machines Ethics, whose mandate is to create such ethical robots, is consequently gaining momentum. Although it is often asked whether a given moral framework can be implemented into machines, it is never asked whether it should be. This paper articulates a pressing challenge for Machine Ethics: To identify an ethical framework that is (...)
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  33. Integrating robot ethics and machine morality: the study and design of moral competence in robots.Bertram F. Malle - 2016 - Ethics and Information Technology 18 (4):243-256.
    Robot ethics encompasses ethical questions about how humans should design, deploy, and treat robots; machine morality encompasses questions about what moral capacities a robot should have and how these capacities could be computationally implemented. Publications on both of these topics have doubled twice in the past 10 years but have often remained separate from one another. In an attempt to better integrate the two, I offer a framework for what a morally competent robot would look like and discuss a (...)
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  34.  24
    Machine Interpretation of Emotion: Design of a Memory‐Based Expert System for Interpreting Facial Expressions in Terms of Signaled Emotions.Garrett D. Kearney & Sati McKenzie - 1993 - Cognitive Science 17 (4):589-622.
    As a first step in involving user emotion in human‐computer interaction, a memory‐based expert system (JANUS; Kearney, 1991) was designed to interpret facial expression in terms of the signaled emotion. Anticipating that a VDU‐mounted camera will eventually supply face parameters automatically, JANUS now accepts manually made measurements on a digitized full‐face photograph and returns emotion labels used by college students. An intermediate representation in terms of face actions (e.g., mouth open) is also used. Production rules convert the geometry into these. (...)
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  35. Machine Advisors: Integrating Large Language Models into Democratic Assemblies.Petr Špecián - forthcoming - Social Epistemology.
    Could the employment of large language models (LLMs) in place of human advisors improve the problem-solving ability of democratic assemblies? LLMs represent the most significant recent incarnation of artificial intelligence and could change the future of democratic governance. This paper assesses their potential to serve as expert advisors to democratic representatives. While LLMs promise enhanced expertise availability and accessibility, they also present specific challenges. These include hallucinations, misalignment and value imposition. After weighing LLMs’ benefits and drawbacks against human advisors, I (...)
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  36.  19
    Medical Machines: The Expanding Role of Ethics in Technology-Driven Healthcare.Connor Brenna - 2021 - Canadian Journal of Bioethics / Revue canadienne de bioéthique 4 (1):107-111.
    Emerging technologies such as artificial intelligence are actively revolutionizing the healthcare industry. While there is widespread concern that these advances will displace human practitioners within the healthcare sector, there are several tasks – including original and nuanced ethical decision making – that they cannot replace. Further, the implementation of artificial intelligence in clinical practice can be anticipated to drive the production of novel ethical tensions surrounding its use, even while eliminating some of the technical tasks which currently compete with (...)
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  37.  16
    Machine translation of expressive means – metaphors.E. M. Khabarova - forthcoming - Philosophical Problems of IT and Cyberspace (PhilIT&C).
    Technology has advanced significantly over the past decades. Significant changes have occurred in the field of translation with the development of programs such as Google.translate and Yandex.translator. The presented applications are already being actively implemented in translation agencies to optimize translation activities, where written translations of documents, articles, annotations, etc. must be provided to customers as quick as possible. While working with popular science text, online programs help translators gain time, but this requires to edit the text. The artistic style (...)
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  38.  33
    (1 other version)On social machines for algorithmic regulation.Nello Cristianini & Teresa Scantamburlo - 2020 - AI and Society 35 (3):645-662.
    Autonomous mechanisms have been proposed to regulate certain aspects of society and are already being used to regulate business organisations. We take seriously recent proposals for algorithmic regulation of society, and we identify the existing technologies that can be used to implement them, most of them originally introduced in business contexts. We build on the notion of ‘social machine’ and we connect it to various ongoing trends and ideas, including crowdsourced task-work, social compiler, mechanism design, reputation management systems, and (...)
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  39.  15
    Implementation of network information security monitoring system based on adaptive deep detection.Lavish Kansal, Abdullah M. Baqasah, Roobaea Alroobaea & Jing Niu - 2022 - Journal of Intelligent Systems 31 (1):454-465.
    For a better detection in Network information security monitoring system, the author proposes a method based on adaptive depth detection. A deep belief network was designed and implemented, and the intrusion detection system model was combined with a support vector machine. The data set adopts the NSL-KDD network communication data set, and this data set is authoritative in the security field. Redundant cleaning, data type conversion, normalization, and other processing operations are performed on the data set. Using the data (...)
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  40. Common Rule Revisions to Govern Machine Learning on Indigenous Data: Implementing the Expectations.Nicole B. Halmai, Stephanie Russo Carroll, Ibrahim Garba, Joseph Manuel Yracheta & Nanibaa’ A. Garrison - 2025 - American Journal of Bioethics 25 (2):73-76.
    We agree with Chapman et al. (2025) that the Common Rule needs revision, particularly regarding the application of artificial intelligence and machine learning (AI/ML) in health research with Indig...
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  41.  94
    Knowledge-based disambiguation for machine translation.Joachim Quantz & Birte Schmitz - 1994 - Minds and Machines 4 (1):39-57.
    The resolution of ambiguities is one of the central problems for Machine Translation. In this paper we propose a knowledge-based approach to disambiguation which uses Description Logics (dl) as representation formalism. We present the process of anaphora resolution implemented in the Machine Translation systemfast and show how thedl systemback is used to support disambiguation.The disambiguation strategy uses factors representing syntactic, semantic, and conceptual constraints with different weights to choose the most adequate antecedent candidate. We show how these factors (...)
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  42.  52
    Machine learning in human creativity: status and perspectives.Mirko Farina, Andrea Lavazza, Giuseppe Sartori & Witold Pedrycz - 2024 - AI and Society 39 (6):3017-3029.
    As we write this research paper, we notice an explosion in popularity of machine learning in numerous fields (ranging from governance, education, and management to criminal justice, fraud detection, and internet of things). In this contribution, rather than focusing on any of those fields, which have been well-reviewed already, we decided to concentrate on a series of more recent applications of deep learning models and technologies that have only recently gained significant track in the relevant literature. These applications are (...)
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  43.  26
    Machine Learning-Based Multitarget Tracking of Motion in Sports Video.Xueliang Zhang & Fu-Qiang Yang - 2021 - Complexity 2021:1-10.
    In this paper, we track the motion of multiple targets in sports videos by a machine learning algorithm and study its tracking technique in depth. In terms of moving target detection, the traditional detection algorithms are analysed theoretically as well as implemented algorithmically, based on which a fusion algorithm of four interframe difference method and background averaging method is proposed for the shortcomings of interframe difference method and background difference method. The fusion algorithm uses the learning rate to update (...)
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  44.  44
    Olympia and Other O-Machines.Colin Klein - 2015 - Philosophia 43 (4):925-931.
    Against Maudlin, I argue that machines which merely reproduce a pre-programmed series of changes ought to be classed with Turing’s O-Machines even if they would counterfactually show Turing Machine-like activity. This can be seen on an interventionist picture of computational architectures, on which basic operations are the primitive loci for interventions. While constructions like Maudlin’s Olympia still compute, then, claims about them do not threaten philosophical arguments that depend on Turing Machine architectures and their computational equivalents.
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  45.  62
    Implementing moral decision making faculties in computers and robots.Wendell Wallach - 2008 - AI and Society 22 (4):463-475.
    The challenge of designing computer systems and robots with the ability to make moral judgments is stepping out of science fiction and moving into the laboratory. Engineers and scholars, anticipating practical necessities, are writing articles, participating in conference workshops, and initiating a few experiments directed at substantiating rudimentary moral reasoning in hardware and software. The subject has been designated by several names, including machine ethics, machine morality, artificial morality, or computational morality. Most references to the challenge elucidate one (...)
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  46. The mismeasure of machine: Synthetic biology and the trouble with engineering metaphors.Maarten Boudry & Massimo Pigliucci - 2013 - Studies in History and Philosophy of Science Part C: Studies in History and Philosophy of Biological and Biomedical Sciences 44 (4):660-668.
    The scientific study of living organisms is permeated by machine and design metaphors. Genes are thought of as the ‘‘blueprint’’ of an organism, organisms are ‘‘reverse engineered’’ to discover their functionality, and living cells are compared to biochemical factories, complete with assembly lines, transport systems, messenger circuits, etc. Although the notion of design is indispensable to think about adaptations, and engineering analogies have considerable heuristic value (e.g., optimality assumptions), we argue they are limited in several important respects. In particular, (...)
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  47.  7
    Using Factor Decomposition Machine Learning Method to Music Recommendation.Dapeng Sun - 2021 - Complexity 2021:1-10.
    The user data mining was introduced into the model construction process, and the user behavior was decomposed by analyzing various influencing factors through the factorization machine learning method. In the recommendation screening stage, the collaborative filtering recommendation is combined to screen the recommendation candidate set. The idea of user-based collaborative filtering is used for reference to obtain music works favored by similar users. On the other hand, we learn from item-based CF, which ensures that the candidate set covers user (...)
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  48.  98
    Malament–Hogarth Machines.J. B. Manchak - 2020 - British Journal for the Philosophy of Science 71 (3):1143-1153.
    This article shows a clear sense in which general relativity allows for a type of ‘machine’ that can bring about a spacetime structure suitable for the implementation of ‘supertasks’. 1Introduction2Preliminaries3Malament–Hogarth Spacetimes4Machines5Malament–Hogarth Machines6Conclusion.
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  49.  55
    Calibrating machine behavior: a challenge for AI alignment.Erez Firt - 2023 - Ethics and Information Technology 25 (3):1-8.
    When discussing AI alignment, we usually refer to the problem of teaching or training advanced autonomous AI systems to make decisions that are aligned with human values or preferences. Proponents of this approach believe it can be employed as means to stay in control over sophisticated intelligent systems, thus avoiding certain existential risks. We identify three general obstacles on the path to implementation of value alignment: a technological/technical obstacle, a normative obstacle, and a calibration problem. Presupposing, for the purposes (...)
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  50.  19
    Reflection machines: increasing meaningful human control over Decision Support Systems.W. F. G. Haselager, H. K. Schraffenberger, R. J. M. van Eerdt & N. A. J. Cornelissen - 2022 - Ethics and Information Technology 24 (2).
    Rapid developments in Artificial Intelligence are leading to an increasing human reliance on machine decision making. Even in collaborative efforts with Decision Support Systems (DSSs), where a human expert is expected to make the final decisions, it can be hard to keep the expert actively involved throughout the decision process. DSSs suggest their own solutions and thus invite passive decision making. To keep humans actively ‘on’ the decision-making loop and counter overreliance on machines, we propose a ‘reflection machine (...)
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