Authors
Sebastian Goldt, Udo Seifert
Publication date
2017/1/6
Journal
Physical review letters
Volume
118
Issue
1
Pages
010601
Publisher
American Physical Society
Description
Virtually every organism gathers information about its noisy environment and builds models from those data, mostly using neural networks. Here, we use stochastic thermodynamics to analyze the learning of a classification rule by a neural network. We show that the information acquired by the network is bounded by the thermodynamic cost of learning and introduce a learning efficiency . We discuss the conditions for optimal learning and analyze Hebbian learning in the thermodynamic limit.
Total citations
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Scholar articles
S Goldt, U Seifert - Physical review letters, 2017