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  1. Does democracy require value-neutral science? Analyzing the legitimacy of scientific information in the political sphere.Greg Lusk - 2021 - Studies in History and Philosophy of Science Part A 90 (C):102-110.
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  • Varying Evidential Standards as a Matter of Justice.Ahmad Elabbar - forthcoming - British Journal for the Philosophy of Science.
    The setting of evidential standards is a core practice of scientific assessment for policy. Persuaded by considerations of inductive risk, philosophers generally agree that the justification of evidential standards must appeal to non-epistemic values but debate whether the balance of non-epistemic reasons favours varying evidential standards versus maintaining fixed high evidential standards in assessment, as both sets of standards promote different and important political virtues of advisory institutions. In this paper, I adjudicate the evidential standards debate by developing a novel (...)
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  • Values in climate modelling: testing the practical applicability of the Moral Imagination ideal.Frida A.-M. Bender, Sabine Undorf & Karoliina Pulkkinen - 2022 - European Journal for Philosophy of Science 12 (4):1-18.
    There is much debate on how social values should influence scientific research. However, the question of practical applicability of philosophers’ normative proposals has received less attention. Here, we test the attainability of Matthew J. Brown’s (2020) Moral Imagination ideal (MI ideal), which aims to help scientists to make warranted value-judgements through reflecting on goals, options, values, and stakeholders of research. Here, the tools of the MI ideal are applied to a climate modelling setting, where researchers are developing aerosol-cloud interaction (ACI) (...)
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  • Value management and model pluralism in climate science.Julie Jebeile & Michel Crucifix - 2021 - Studies in History and Philosophy of Science Part A 88 (August 2021):120-127.
    Non-epistemic values pervade climate modelling, as is now well documented and widely discussed in the philosophy of climate science. Recently, Parker and Winsberg have drawn attention to what can be termed “epistemic inequality”: this is the risk that climate models might more accurately represent the future climates of the geographical regions prioritised by the values of the modellers. In this paper, we promote value management as a way of overcoming epistemic inequality. We argue that value management can be seriously considered (...)
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  • Non-epistemic values and scientific assessment: an adequacy-for-purpose view.Greg Lusk & Kevin C. Elliott - 2022 - European Journal for Philosophy of Science 12 (2):1-22.
    The literature on values in science struggles with questions about how to describe and manage the role of values in scientific research. We argue that progress can be made by shifting this literature’s current emphasis. Rather than arguing about how non-epistemic values can or should figure into scientific assessment, we suggest analyzing how scientific assessment can accommodate non-epistemic values. For scientific assessment to do so, it arguably needs to incorporate goals that have been traditionally characterized as non-epistemic. Building on this (...)
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  • Varieties of Data-Centric Science: Regional Climate Modeling and Model Organism Research.Elisabeth Lloyd, Greg Lusk, Stuart Gluck & Seth McGinnis - 2022 - Philosophy of Science 89 (4):802-823.
    Modern science’s ability to produce, store, and analyze big datasets is changing the way that scientific research is practiced. Philosophers have only begun to comprehend the changed nature of scientific reasoning in this age of “big data.” We analyze data-focused practices in biology and climate modeling, identifying distinct species of data-centric science: phenomena-laden in biology and phenomena-agnostic in climate modeling, each better suited for its own domain of application, though each entail trade-offs. We argue that data-centric practices in science are (...)
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