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  1. The Ethics of Algorithms in Healthcare.Christina Oxholm, Anne-Marie S. Christensen & Anette S. Nielsen - 2022 - Cambridge Quarterly of Healthcare Ethics 31 (1):119-130.
    The amount of data available to healthcare practitioners is growing, and the rapid increase in available patient data is becoming a problem for healthcare practitioners, as they are often unable to fully survey and process the data relevant for the treatment or care of a patient. Consequently, there are currently several efforts to develop systems that can aid healthcare practitioners with reading and processing patient data and, in this way, provide them with a better foundation for decision-making about the treatment (...)
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  • From Greenwashing to Machinewashing: A Model and Future Directions Derived from Reasoning by Analogy.Peter Seele & Mario D. Schultz - 2022 - Journal of Business Ethics 178 (4):1063-1089.
    This article proposes a conceptual mapping to outline salient properties and relations that allow for a knowledge transfer from the well-established greenwashing phenomenon to the more recent machinewashing. We account for relevant dissimilarities, indicating where conceptual boundaries may be drawn. Guided by a “reasoning by analogy” approach, the article addresses the structural analogy and machinewashing idiosyncrasies leading to a novel and theoretically informed model of machinewashing. Consequently, machinewashing is defined as a strategy that organizations adopt to engage in misleading behavior (...)
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  • Transparency and the Black Box Problem: Why We Do Not Trust AI.Warren J. von Eschenbach - 2021 - Philosophy and Technology 34 (4):1607-1622.
    With automation of routine decisions coupled with more intricate and complex information architecture operating this automation, concerns are increasing about the trustworthiness of these systems. These concerns are exacerbated by a class of artificial intelligence that uses deep learning, an algorithmic system of deep neural networks, which on the whole remain opaque or hidden from human comprehension. This situation is commonly referred to as the black box problem in AI. Without understanding how AI reaches its conclusions, it is an open (...)
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  • How the machine ‘thinks’: Understanding opacity in machine learning algorithms.Jenna Burrell - 2016 - Big Data and Society 3 (1):205395171562251.
    This article considers the issue of opacity as a problem for socially consequential mechanisms of classification and ranking, such as spam filters, credit card fraud detection, search engines, news trends, market segmentation and advertising, insurance or loan qualification, and credit scoring. These mechanisms of classification all frequently rely on computational algorithms, and in many cases on machine learning algorithms to do this work. In this article, I draw a distinction between three forms of opacity: opacity as intentional corporate or state (...)
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  • Homo Deus: A Brief History of Tomorrow.Yuval Noah Harari - unknown
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  • Transparency in Algorithmic and Human Decision-Making: Is There a Double Standard?John Zerilli, Alistair Knott, James Maclaurin & Colin Gavaghan - 2018 - Philosophy and Technology 32 (4):661-683.
    We are sceptical of concerns over the opacity of algorithmic decision tools. While transparency and explainability are certainly important desiderata in algorithmic governance, we worry that automated decision-making is being held to an unrealistically high standard, possibly owing to an unrealistically high estimate of the degree of transparency attainable from human decision-makers. In this paper, we review evidence demonstrating that much human decision-making is fraught with transparency problems, show in what respects AI fares little worse or better and argue that (...)
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  • Solving the Black Box Problem: A Normative Framework for Explainable Artificial Intelligence.Carlos Zednik - 2019 - Philosophy and Technology 34 (2):265-288.
    Many of the computing systems programmed using Machine Learning are opaque: it is difficult to know why they do what they do or how they work. Explainable Artificial Intelligence aims to develop analytic techniques that render opaque computing systems transparent, but lacks a normative framework with which to evaluate these techniques’ explanatory successes. The aim of the present discussion is to develop such a framework, paying particular attention to different stakeholders’ distinct explanatory requirements. Building on an analysis of “opacity” from (...)
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  • Against Interpretability: a Critical Examination of the Interpretability Problem in Machine Learning.Maya Krishnan - 2020 - Philosophy and Technology 33 (3):487-502.
    The usefulness of machine learning algorithms has led to their widespread adoption prior to the development of a conceptual framework for making sense of them. One common response to this situation is to say that machine learning suffers from a “black box problem.” That is, machine learning algorithms are “opaque” to human users, failing to be “interpretable” or “explicable” in terms that would render categorization procedures “understandable.” The purpose of this paper is to challenge the widespread agreement about the existence (...)
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  • (2 other versions)Truth and Method.H. G. Gadamer - 1975 - Journal of Aesthetics and Art Criticism 36 (4):487-490.
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  • What an Algorithm Is.Robin K. Hill - 2016 - Philosophy and Technology 29 (1):35-59.
    The algorithm, a building block of computer science, is defined from an intuitive and pragmatic point of view, through a methodological lens of philosophy rather than that of formal computation. The treatment extracts properties of abstraction, control, structure, finiteness, effective mechanism, and imperativity, and intentional aspects of goal and preconditions. The focus on the algorithm as a robust conceptual object obviates issues of correctness and minimality. Neither the articulation of an algorithm nor the dynamic process constitute the algorithm itself. Analysis (...)
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  • Editors' Introduction.Luca M. Possati & Alberto Romele - 2020 - Critical Hermeneutics 4 (1).
    Digital media and technologies have significantly transformed the ways we relate to the world, in the triple sense of Selbstwelt, Mitwelt, and Umwelt. Think of the quantification of the self, the number of followers and likes on social media, or using Google maps and similar tools to orient ourselves in a city, to find and choose a good restaurant, and so on. One might say that digital media and technologies have actually transformed our interpretation, understanding, and access to the world. (...)
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  • (4 other versions)Kant's gesammelte Schriften.[author unknown] - 1905 - Revue Philosophique de la France Et de l'Etranger 60:110-110.
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  • Critique of the Power of Judgment.Hannah Ginsborg, Immanuel Kant, Paul Guyer & Eric Matthews - 2002 - Philosophical Review 111 (3):429.
    This new translation is an extremely welcome addition to the continuing Cambridge Edition of Kant’s works. English-speaking readers of the third Critique have long been hampered by the lack of an adequate translation of this important and difficult work. James Creed Meredith’s much-reprinted translation has charm and elegance, but it is often too loose to be useful for scholarly purposes. Moreover it does not include the first version of Kant’s introduction, the so-called “First Introduction,” which is now recognized as indispensable (...)
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  • On founding the theory of algorithms.Yiannis N. Moschovakis - 1998 - In Harold Garth Dales & Gianluigi Oliveri (eds.), Truth in mathematics. New York: Oxford University Press, Usa. pp. 71--104.
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  • From judgment to calculation.Mike Cooley - 2007 - AI and Society 21 (4):395-409.
    We only regard a system or a process as being “scientific” if it displays the three predominant characteristics of the natural sciences: predictability, repeatability and quantifiability. This by definition precludes intuition, subjective judgement, tacit knowledge, heuristics, dreams, etc. in other words, those attributes which are peculiarly human. Furthermore, this is resulting in a shift from judgment to calculation giving rise, in some cases, to an abject dependency on the machine and an inability to disagree with the outcome or even question (...)
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  • Explainable AI: From black box to glass box.A. Rai - 2020 - Journal of the Academy of Marketing Science 48.
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  • Gadamer in a Wired Brain: Philosophical Hermeneutics and Neuralink.Matthew S. Lindia - 2022 - Philosophy and Technology 35 (2):1-17.
    In the spirit of Slavoj Žižek’s book, Hegel in a Wired Brain, this article asks how the questions central to Hans-Georg Gadamer’s philosophical hermeneutics are changed and complicated by the possibility of brain-to-brain communication and the datafication of thought made potential through brain-computer interfaces. By taking a phenomenological approach to understanding the nature of communication through a technology that does not require language for the transmission of ideas, this article explores how BCI communication confronts the ontological character of interpretation as (...)
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  • AI ethics inflation, Delphi and the restart of theory.Peter Seele - 2024 - AI and Society 39 (1):403-405.
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  • What is Interpretability?Adrian Erasmus, Tyler D. P. Brunet & Eyal Fisher - 2021 - Philosophy and Technology 34:833–862.
    We argue that artificial networks are explainable and offer a novel theory of interpretability. Two sets of conceptual questions are prominent in theoretical engagements with artificial neural networks, especially in the context of medical artificial intelligence: Are networks explainable, and if so, what does it mean to explain the output of a network? And what does it mean for a network to be interpretable? We argue that accounts of “explanation” tailored specifically to neural networks have ineffectively reinvented the wheel. In (...)
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  • Thinking and Moral Considerations: A Lecture.Hannah Arendt - 1984 - Social Research: An International Quarterly 51.
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  • Responsibility and Decision Making in the Era of Neural Networks.William Bechtel - 1996 - Social Philosophy and Policy 13 (2):267.
    Many of the mathematicians and scientists who guided the development of digital computers in the late 1940s, such as Alan Turing and John von Neumann, saw these new devices not just as tools for calculation but as devices that might employ the same principles as are exhibited in rational human thought. Thus, a subfield of what came to be called computer science assumed the label artificial intelligence. The idea of building artificial systems which could exhibit intelligent behavior comparable to that (...)
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  • On the Philosophy of Unsupervised Learning.David S. Watson - 2023 - Philosophy and Technology 36 (2):1-26.
    Unsupervised learning algorithms are widely used for many important statistical tasks with numerous applications in science and industry. Yet despite their prevalence, they have attracted remarkably little philosophical scrutiny to date. This stands in stark contrast to supervised and reinforcement learning algorithms, which have been widely studied and critically evaluated, often with an emphasis on ethical concerns. In this article, I analyze three canonical unsupervised learning problems: clustering, abstraction, and generative modeling. I argue that these methods raise unique epistemological and (...)
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  • Unsupervised by any other name: Hidden layers of knowledge production in artificial intelligence on social media.Geoffrey C. Bowker & Anja Bechmann - 2019 - Big Data and Society 6 (1).
    Artificial Intelligence in the form of different machine learning models is applied to Big Data as a way to turn data into valuable knowledge. The rhetoric is that ensuing predictions work well—with a high degree of autonomy and automation. We argue that we need to analyze the process of applying machine learning in depth and highlight at what point human knowledge production takes place in seemingly autonomous work. This article reintroduces classification theory as an important framework for understanding such seemingly (...)
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  • What is an algorithm?Yiannis Moschovakis - 2001 - In Mathematics Unlimited --- 2001 and beyond.
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  • Hermeneutic of performing data.Karamjit S. Gill - 2017 - AI and Society 32 (3):309-320.
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  • The necessity of judgment.Jeff Malpas - 2020 - AI and Society 35 (4):1073-1074.
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  • Lectures on Kant’s Political Philosophy,.Hannah Arendt & Ronald Beiner - 1982 - Tijdschrift Voor Filosofie 56 (2):386-386.
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  • Sources of Understanding in Supervised Machine Learning Models.Paulo Pirozelli - 2022 - Philosophy and Technology 35 (2):1-19.
    In the last decades, supervised machine learning has seen the widespread growth of highly complex, non-interpretable models, of which deep neural networks are the most typical representative. Due to their complexity, these models have showed an outstanding performance in a series of tasks, as in image recognition and machine translation. Recently, though, there has been an important discussion over whether those non-interpretable models are able to provide any sort of understanding whatsoever. For some scholars, only interpretable models can provide understanding. (...)
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  • Mathematizing Power, Formalization, and the Diagrammatical Mind or: What Does “Computation” Mean? [REVIEW]Sybille Krämer - 2014 - Philosophy and Technology 27 (3):345-357.
    Computation and formalization are not modalities of pure abstractive operations. The essay tries to revise the assumption of the constitutive nonsensuality of the formal. The argument is that formalization is a kind of linear spatialization, which has significant visual dimensions. Thus, a connection can be discovered between visualization by figurative graphism and formalization by symbolic calculations: Both use spatial relations not only to represent but also to operate on epistemic, nonspatial, nonvisual entities. Descartes was one of the pioneers of using (...)
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