Approach
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The optimization target of learning the filter-wise and channel-wise structured sparsity can be defined as:
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Our approach tends to remove less important filters and channels. Note that zeroing out a filter in the l-th layer results in a dummy zero output feature map, which in turn makes a corresponding channel in the (l + 1)-th layer useless. Hence, we combine the filter-wise and channel-wise structured sparsity in the learning simultaneously.
Experiment
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References:
Learning Structured Sparsity in Deep Neural Networks, Wei Wen, 2016, NIPS
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