2022
DOI: 10.48550/arxiv.2205.02131
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Domino Saliency Metrics: Improving Existing Channel Saliency Metrics with Structural Information

Abstract: Channel pruning is used to reduce the number of weights in a Convolutional Neural Network (CNN). Channel pruning removes slices of the weight tensor so that the convolution layer remains dense. The removal of these weight slices from a single layer causes mismatching number of feature maps between layers of the network. A simple solution is to force the number of feature map between layers to match through the removal of weight slices from subsequent layers. This additional constraint becomes more apparent in … Show more

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