ID |
263
|
Authors |
GRÜNKE Paul
|
Title |
Chess, Artificial Intelligence, and Epistemic Opacity
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Title (translation) |
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Subtitle |
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Subtitle (translation) |
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Keywords |
Opacity, Machine Learning, Modeling, Chess
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Keywords (translation) |
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Issue |
2019/4
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DOI |
https://doi.org/10.22503/inftars.XIX.2019.4.1
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Abstract |
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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Abstract (translation) |
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Language |
English
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Pages |
7-17
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Column |
Tanulmányok
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