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  1. Data and Model Operations in Computational Sciences: The Examples of Computational Embryology and Epidemiology.Fabrizio Li Vigni - 2022 - Perspectives on Science 30 (4):696-731.
    Computer models and simulations have become, since the 1960s, an essential instrument for scientific inquiry and political decision making in several fields, from climate to life and social sciences. Philosophical reflection has mainly focused on the ontological status of the computational modeling, on its epistemological validity and on the research practices it entails. But in computational sciences, the work on models and simulations are only two steps of a longer and richer process where operations on data are as important as, (...)
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  • Epistemological Issues Concerning Computer Simulations in Science and Their Implications for Science Education.Ileana M. Greca, Eugenia Seoane & Irene Arriassecq - 2014 - Science & Education 23 (4):897-921.
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  • Are computer simulations experiments? And if not, how are they related to each other?Claus Beisbart - 2018 - European Journal for Philosophy of Science 8 (2):171-204.
    Computer simulations and experiments share many important features. One way of explaining the similarities is to say that computer simulations just are experiments. This claim is quite popular in the literature. The aim of this paper is to argue against the claim and to develop an alternative explanation of why computer simulations resemble experiments. To this purpose, experiment is characterized in terms of an intervention on a system and of the observation of the reaction. Thus, if computer simulations are experiments, (...)
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  • Derivational Robustness and Indirect Confirmation.Aki Lehtinen - 2018 - Erkenntnis 83 (3):539-576.
    Derivational robustness may increase the degree to which various pieces of evidence indirectly confirm a robust result. There are two ways in which this increase may come about. First, if one can show that a result is robust, and that the various individual models used to derive it also have other confirmed results, these other results may indirectly confirm the robust result. Confirmation derives from the fact that data not known to bear on a result are shown to be relevant (...)
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  • (1 other version)Understanding and misunderstanding computer simulation: The case of atmospheric and climate science—An introduction.Matthias Heymann - 2010 - Studies in History and Philosophy of Science Part B: Studies in History and Philosophy of Modern Physics 41 (3):193-200.
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  • (1 other version)Global Climate Modeling as Applied Science.William M. Goodwin - 2015 - Journal for General Philosophy of Science / Zeitschrift für Allgemeine Wissenschaftstheorie 46 (2):339-350.
    In this paper I argue that the appropriate analogy for “understanding what makes simulation results reliable” in global climate modeling is not with scientific experimentation or measurement, but—at least in the case of the use of global climate models for policy development—with the applications of science in applied design problems. The prospects for using this analogy to argue for the quantitative reliability of GCMs are assessed and compared with other potential strategies.
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  • (1 other version)Global Climate Modeling as Applied Science.William M. Goodwin - 2015 - Journal for General Philosophy of Science / Zeitschrift für Allgemeine Wissenschaftstheorie 46 (2):339-350.
    In this paper I argue that the appropriate analogy for “understanding what makes simulation results reliable” in Global Climate Modeling is not with scientific experimentation or measurement, but—at least in the case of the use of global climate models for policy development—with the applications of science in engineering design problems. The prospects for using this analogy to argue for the quantitative reliability of GCMs are assessed and compared with other potential strategies.
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