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Paul Grünke [4]P. Grünke [1]
  1.  95
    Computer Simulations, Machine Learning and the Laplacean Demon: Opacity in the Case of High Energy Physics.Florian J. Boge & Paul Grünke - forthcoming - In Andreas Kaminski, Michael Resch & Petra Gehring (eds.), The Science and Art of Simulation II.
    In this paper, we pursue three general aims: (I) We will define a notion of fundamental opacity and ask whether it can be found in High Energy Physics (HEP), given the involvement of machine learning (ML) and computer simulations (CS) therein. (II) We identify two kinds of non-fundamental, contingent opacity associated with CS and ML in HEP respectively, and ask whether, and if so how, they may be overcome. (III) We address the question of whether any kind of opacity, contingent (...)
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  2.  56
    Minds and Machines Special Issue: Machine Learning: Prediction Without Explanation?F. J. Boge, P. Grünke & R. Hillerbrand - 2022 - Minds and Machines 32 (1):1-9.
  3.  76
    From Principles to Practice. An interdisciplinary framework to operationalise AI ethics.Lajla Fetic, Torsten Fleischer, Paul Grünke, Thilo Hagendorf, Sebastian Hallensleben, Marc Hauer, Michael Herrmann, Rafaela Hillerbrand, Carla Hustedt, Christoph Hubig, Andreas Kaminski, Tobias Krafft, Wulf Loh, Philipp Otto & Michael Puntschuh - 2020 - Bertelsmann-Stiftung.
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  4.  38
    Introduction: Simplicity out of complexity? Physics and the aims of science.Florian J. Boge, Miguel-Ángel Carretero-Sahuquillo, Paul Grünke & Martin King - 2023 - Synthese 201 (4):1-9.
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  5.  37
    Chess, Artificial Intelligence, and Epistemic Opacity.Paul Grünke - 2019 - Információs Társadalom 19 (4):7--17.
    In 2017 AlphaZero, a neural network-based chess engine shook the chess world by convincingly beating Stockfish, the highest-rated chess engine. In this paper, I describe the technical differences between the two chess engines and based on that, I discuss the impact of the modeling choices on the respective epistemic opacities. I argue that the success of AlphaZero’s approach with neural networks and reinforcement learning is counterbalanced by an increase in the epistemic opacity of the resulting model.
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