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Towards thinner convolutional neural networks through Gradually Global Pruning (1703.09916v1)

Published 29 Mar 2017 in cs.CV

Abstract: Deep network pruning is an effective method to reduce the storage and computation cost of deep neural networks when applying them to resource-limited devices. Among many pruning granularities, neuron level pruning will remove redundant neurons and filters in the model and result in thinner networks. In this paper, we propose a gradually global pruning scheme for neuron level pruning. In each pruning step, a small percent of neurons were selected and dropped across all layers in the model. We also propose a simple method to eliminate the biases in evaluating the importance of neurons to make the scheme feasible. Compared with layer-wise pruning scheme, our scheme avoid the difficulty in determining the redundancy in each layer and is more effective for deep networks. Our scheme would automatically find a thinner sub-network in original network under a given performance.

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Authors (5)
  1. Zhengtao Wang (6 papers)
  2. Ce Zhu (85 papers)
  3. Zhiqiang Xia (3 papers)
  4. Qi Guo (237 papers)
  5. Yipeng Liu (89 papers)
Citations (4)