2023
DOI: 10.48550/arxiv.2302.07419
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Spatially heterogeneous learning by a deep student machine

Abstract: Despite the spectacular successes, deep neural networks (DNN) with a huge number of adjustable parameters remain largely black boxes. To shed light on the hidden layers of DNN, we study supervised learning by a DNN of width N and depth L consisting of perceptrons with c inputs by a statistical mechanics approach called the teacher-student setting. We consider an ensemble of student machines that exactly reproduce M sets of N dimensional input/output relations provided by a teacher machine. We analyze the ensem… Show more

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