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arxiv: 1708.01422 · v3 · pith:WXILIXESnew · submitted 2017-08-04 · ❄️ cond-mat.dis-nn · cs.LG

Exploring the Function Space of Deep-Learning Machines

classification ❄️ cond-mat.dis-nn cs.LG
keywords functiondeep-learningentropyerrorfunctionsmachinesreferencespace
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The function space of deep-learning machines is investigated by studying growth in the entropy of functions of a given error with respect to a reference function, realized by a deep-learning machine. Using physics-inspired methods we study both sparsely and densely-connected architectures to discover a layer-wise convergence of candidate functions, marked by a corresponding reduction in entropy when approaching the reference function, gain insight into the importance of having a large number of layers, and observe phase transitions as the error increases.

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