Back to Search Start Over

Deep Representation with ReLU Neural Networks

Authors :
Heinecke, Andreas
Hwang, Wen-Liang
Publication Year :
2019

Abstract

We consider deep feedforward neural networks with rectified linear units from a signal processing perspective. In this view, such representations mark the transition from using a single (data-driven) linear representation to utilizing a large collection of affine linear representations tailored to particular regions of the signal space. This paper provides a precise description of the individual affine linear representations and corresponding domain regions that the (data-driven) neural network associates to each signal of the input space. In particular, we describe atomic decompositions of the representations and, based on estimating their Lipschitz regularity, suggest some conditions that can stabilize learning independent of the network depth. Such an analysis may promote further theoretical insight from both the signal processing and machine learning communities.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1903.12384
Document Type :
Working Paper