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BRIEF: Backward Reduction of CNNs with Information Flow Analysis

机译:简介:通过信息流分析向后减少CNN

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This paper proposes BRIEF, a backward reduction algorithm that explores compact CNN-model designs from the information flow perspective. This algorithm can remove substantial non-zero weighting parameters (redundant neural channels) of a network by considering its dynamic behavior, which traditional model-compaction techniques cannot achieve. With the aid of our proposed algorithm, we achieve significant model reduction on ResNet-34 in the ImageNet scale (32.3% reduction), which is 3X better than the previous result (10.8%). Even for highly optimized models such as SqueezeNet and MobileNet, we can achieve additional 10.81% and 37.56% reduction, respectively, with negligible performance degradation.
机译:本文提出了Brief,一种从信息流的角度探索紧凑的CNN模型设计的反向约简算法。该算法可以通过考虑网络的动态行为来消除网络的实质性非零加权参数(冗余神经通道),而传统的模型压缩技术无法实现这种行为。借助我们提出的算法,我们在ResNet-34上实现了ImageNet规模上的显着模型缩减(减少了32.3%),这比之前的结果(10.8%)好了3倍。即使对于诸如SqueezeNet和MobileNet之类的高度优化的模型,我们也可以分别实现10.81%和37.56%的额外降低,而性能下降可忽略不计。

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