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Finding the Optimal Network Depth in Classification Tasks

Authors :
Wójcik, Bartosz
Wołczyk, Maciej
Bałazy, Klaudia
Tabor, Jacek
Publication Year :
2020

Abstract

We develop a fast end-to-end method for training lightweight neural networks using multiple classifier heads. By allowing the model to determine the importance of each head and rewarding the choice of a single shallow classifier, we are able to detect and remove unneeded components of the network. This operation, which can be seen as finding the optimal depth of the model, significantly reduces the number of parameters and accelerates inference across different hardware processing units, which is not the case for many standard pruning methods. We show the performance of our method on multiple network architectures and datasets, analyze its optimization properties, and conduct ablation studies.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2004.08172
Document Type :
Working Paper