BriefGPT.xyz
Jul, 2020
是滤波剪枝,还是层剪枝,这是一个问题
To filter prune, or to layer prune, that is the question
HTML
PDF
Sara Elkerdawy, Mostafa Elhoushi, Abhineet Singh, Hong Zhang, Nilanjan Ray
TL;DR
本文提出了LayerPrune框架,相较于传统基于filter的剪枝方法,LayerPrune基于不同的剪枝指标实现了更高的延迟降低,并使用相同的filter重要性判定剪枝最不重要的层,较好地平衡了准确率和删除率。
Abstract
Recent advances in
pruning
of
neural networks
have made it possible to remove a large number of filters or weights without any perceptible drop in accuracy. The number of parameters and that of FLOPs are usually
→