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  1. Bioethics and health and human rights: a critical view.D. Benatar - 2006 - Journal of Medical Ethics 32 (1):17-20.
    Recent decades have seen the emergence of two new fields of inquiry into ethical issues in medicine. These are the fields of bioethics and of health and human rights. In this critical review of these fields, the author argues that bioethics, partly because it has been construed so broadly, suffers from quality control problems. The author also argues that the field of health and human rights is superfluous because it does nothing that cannot be done by either bioethics of the (...)
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  • Epistemic injustice: power and the ethics of knowing.Miranda Fricker - 2007 - New York: Oxford University Press.
    Fricker shows that virtue epistemology provides a general epistemological idiom in which these issues can be forcefully discussed.
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  • What Should ChatGPT Mean for Bioethics?I. Glenn Cohen - 2023 - American Journal of Bioethics 23 (10):8-16.
    In the last several months, several major disciplines have started their initial reckoning with what ChatGPT and other Large Language Models (LLMs) mean for them – law, medicine, business among other professions. With a heavy dose of humility, given how fast the technology is moving and how uncertain its social implications are, this article attempts to give some early tentative thoughts on what ChatGPT might mean for bioethics. I will first argue that many bioethics issues raised by ChatGPT are similar (...)
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  • Assessing biases, relaxing moralism: On ground-truthing practices in machine learning design and application.Florian Jaton - 2021 - Big Data and Society 8 (1).
    This theoretical paper considers the morality of machine learning algorithms and systems in the light of the biases that ground their correctness. It begins by presenting biases not as a priori negative entities but as contingent external referents—often gathered in benchmarked repositories called ground-truth datasets—that define what needs to be learned and allow for performance measures. I then argue that ground-truth datasets and their concomitant practices—that fundamentally involve establishing biases to enable learning procedures—can be described by their respective morality, here (...)
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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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  • The constitution of algorithms: ground-truthing, programming, formulating.Florian Jaton - 2020 - Cambridge, Massachusetts: The MIT Press. Edited by Geoffrey C. Bowker.
    Ethnographic study of the constitution of algorithms.
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