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2021
DOI: 10.48550/arxiv.2104.14546
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Soft Mode in the Dynamics of Over-realizable On-line Learning for Soft Committee Machines

Frederieke Richert,
Roman Worschech,
Bernd Rosenow

Abstract: Over-parametrized deep neural networks trained by stochastic gradient descent are successful in performing many tasks of practical relevance. One aspect of over-parametrization is the possibility that the student network has a larger expressivity than the data generating process. In the context of a student-teacher scenario, this corresponds to the so-called over-realizable case, where the student network has a larger number of hidden units than the teacher. For on-line learning of a two-layer soft committee m… Show more

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References 26 publications
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