9 found
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  1.  17
    AI research assistants, intrinsic values, and the science we want.Ariel Guersenzvaig & Javier Sánchez-Monedero - forthcoming - AI and Society:1-3.
  2.  47
    The Goods of Design: Professional Ethics for Designers.Ariel Guersenzvaig - 2021 - London - New York: Rowman & Littlefield Publishers.
    What ends should designers pursue? To what extent should they care about the societal and environmental impact of their work? And why should they care at all? Given the key influence design has on the way people live their lives, designing is fraught with ethical issues. Yet, unlike education or nursing, it lacks widespread professional principles for addressing these issues. -/- Rooted in a communitarian view of design practice, this lively and accessible book examines design through the lens of professions, (...)
  3.  22
    Bias in algorithms of AI systems developed for COVID-19: A scoping review.Janet Delgado, Alicia de Manuel, Iris Parra, Cristian Moyano, Jon Rueda, Ariel Guersenzvaig, Txetxu Ausin, Maite Cruz, David Casacuberta & Angel Puyol - 2022 - Journal of Bioethical Inquiry 19 (3):407-419.
    To analyze which ethically relevant biases have been identified by academic literature in artificial intelligence algorithms developed either for patient risk prediction and triage, or for contact tracing to deal with the COVID-19 pandemic. Additionally, to specifically investigate whether the role of social determinants of health have been considered in these AI developments or not. We conducted a scoping review of the literature, which covered publications from March 2020 to April 2021. ​Studies mentioning biases on AI algorithms developed for contact (...)
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  4. Ethical assessments and mitigation strategies for biases in AI-systems used during the COVID-19 pandemic.Alicia De Manuel, Janet Delgado, Parra Jonou Iris, Txetxu Ausín, David Casacuberta, Maite Cruz Piqueras, Ariel Guersenzvaig, Cristian Moyano, David Rodríguez-Arias, Jon Rueda & Angel Puyol - 2023 - Big Data and Society 10 (1).
    The main aim of this article is to reflect on the impact of biases related to artificial intelligence (AI) systems developed to tackle issues arising from the COVID-19 pandemic, with special focus on those developed for triage and risk prediction. A secondary aim is to review assessment tools that have been developed to prevent biases in AI systems. In addition, we provide a conceptual clarification for some terms related to biases in this particular context. We focus mainly on nonracial biases (...)
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  5.  24
    Justificatory explanations in machine learning: for increased transparency through documenting how key concepts drive and underpin design and engineering decisions.David Casacuberta, Ariel Guersenzvaig & Cristian Moyano-Fernández - 2024 - AI and Society 39 (1):279-293.
    Given the pervasiveness of AI systems and their potential negative effects on people’s lives (especially among already marginalised groups), it becomes imperative to comprehend what goes on when an AI system generates a result, and based on what reasons, it is achieved. There are consistent technical efforts for making systems more “explainable” by reducing their opaqueness and increasing their interpretability and explainability. In this paper, we explore an alternative non-technical approach towards explainability that complement existing ones. Leaving aside technical, statistical, (...)
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  6.  20
    Beyond Incommensurability and Appropriateness: Integrating the Telos of Medicine and Addressing Compartmentalization in the Spheres of Morality Framework.Ariel Guersenzvaig - 2023 - American Journal of Bioethics 23 (12):34-36.
    Doernberg and Truog (2023) present a thoughtful analysis of the ethical tensions that arise from physicians increasingly occupying “multiple roles in healthcare”1 I take no issue with the classific...
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  7.  18
    Can machine learning make naturalism about health truly naturalistic? A reflection on a data-driven concept of health.Ariel Guersenzvaig - 2023 - Ethics and Information Technology 26 (1):1-12.
    Through hypothetical scenarios, this paper analyses whether machine learning (ML) could resolve one of the main shortcomings present in Christopher Boorse’s Biostatistical Theory of health (BST). In doing so, it foregrounds the boundaries and challenges of employing ML in formulating a naturalist (i.e., prima facie value-free) definition of health. The paper argues that a sweeping dataist approach cannot fully make the BST truly naturalistic, as prior theories and values persist. It also points out that supervised learning introduces circularity, rendering it (...)
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  8.  12
    Presentación de la sección sobre Inteligencia artificial, datos y objetividad. ¿El regreso del naturalismo dataísta?Ariel Guersenzvaig & David Casacuberta - 2023 - Daimon: Revista Internacional de Filosofía 90:7-12.
    Presentation of the section on Artificial Intelligence, Data and Objectivity: The Return of Data Naturalism? in the Monograph on Artificial Intelligence of Daimon - International Journal of Philosophy. Nº 90 (September - December 2023). Presentación de la sección sobre Inteligencia artificial, datos y objetividad. ¿El regreso del naturalismo dataista? en el Monográfico sobre Inteligencia Artificial de Daimon - Revista Internacional de Filosofía. Nº 90 (septiembre - Diciembre 2023).
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  9.  38
    Using Dreyfus’ legacy to understand justice in algorithm-based processes.David Casacuberta & Ariel Guersenzvaig - 2019 - AI and Society 34 (2):313-319.
    As AI is linked to more and more aspects of our lives, the need for algorithms that can take decisions that are not only accurate but also fair becomes apparent. It can be seen both in discussions of future trends such as autonomous vehicles or the issue of superintelligence, as well as actual implementations of machine learning used to decide whether a person should be admitted in certain university or will be able to return a credit. In this paper, we (...)
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