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演講公告

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Un-rectifying Non-linear Networks for Signal Representation

  • 2020-05-25 (Mon.), 10:30 AM
  • 中研院-統計所 1004演講廳(環境變遷研究大樓C棟)
  • 茶 會:上午10:10統計所1004演講廳外(環境變遷研究大樓C棟)
  • Prof. Wen-Liang Hwang(黃文良 研究員)
  • Institute of Information Science, Academia Sinica 中央研究院資訊科學研究所

Abstract

We consider deep neural networks with rectifier activations and max-pooling from a signal representation perspective. In this view, such representations mark the transition from using a single linear representation for all signals to utilizing a large collection of affine linear representations that are tailored to particular regions of the signal space. We propose a novel technique to “un-rectify” the nonlinear activations into data-dependent linear equations and constraints, from which we derive explicit expressions for the affine linear operators, their domains and ranges in terms of the network parameters. We show how increasing the depth of the network refines the domain partitioning and derive atomic decompositions for the corresponding affine mappings that process data belonging to the same partitioning region. In each atomic decomposition the connections over all hidden network layers are summarized and interpreted in a single matrix. We apply the decompositions to study the Lipschitz regularity of the networks and give sufficient conditions for network-depth-independent stability of the representation, drawing a connection to compressible weight distributions. Such analyses may facilitate and promote further theoretical insight and exchange from both the signal processing and machine learning communities.

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