Understanding Deep Learning with Statistical Relevance

Philosophy of Science 89 (1):20-41 (2022)
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Abstract

This paper argues that a notion of statistical explanation, based on Salmon’s statistical relevance model, can help us better understand deep neural networks. It is proved that homogeneous partitions, the core notion of Salmon’s model, are equivalent to minimal sufficient statistics, an important notion from statistical inference. This establishes a link to deep neural networks via the so-called Information Bottleneck method, an information-theoretic framework, according to which deep neural networks implicitly solve an optimization problem that generalizes minimal sufficient statistics. The resulting notion of statistical explanation is general, mathematical, and subcausal.

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Tim Räz
University of Bern

References found in this work

Abstract Explanations in Science.Christopher Pincock - 2014 - British Journal for the Philosophy of Science 66 (4):857-882.
Euler’s Königsberg: the explanatory power of mathematics.Tim Räz - 2018 - European Journal for Philosophy of Science 8 (3):331-346.
The Volterra Principle Generalized.Tim Räz - 2017 - Philosophy of Science 84 (4):737-760.

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