CVFeb 24, 2020

HRank: Filter Pruning using High-Rank Feature Map

arXiv:2002.10179v2882 citationsHas Code
AI Analysis

This addresses the challenge of deploying deep neural networks on resource-limited devices by providing a more efficient pruning method, though it is incremental as it builds on existing filter pruning approaches.

The paper tackles the problem of inefficient neural network pruning by proposing HRank, a filter pruning method based on the high rank of feature maps, which achieves significant reductions in FLOPs and parameters with minimal accuracy loss, e.g., 58.2% FLOPs reduction and 59.2% parameters removed on ResNet-110 with only 0.14% top-1 accuracy drop on CIFAR-10.

Neural network pruning offers a promising prospect to facilitate deploying deep neural networks on resource-limited devices. However, existing methods are still challenged by the training inefficiency and labor cost in pruning designs, due to missing theoretical guidance of non-salient network components. In this paper, we propose a novel filter pruning method by exploring the High Rank of feature maps (HRank). Our HRank is inspired by the discovery that the average rank of multiple feature maps generated by a single filter is always the same, regardless of the number of image batches CNNs receive. Based on HRank, we develop a method that is mathematically formulated to prune filters with low-rank feature maps. The principle behind our pruning is that low-rank feature maps contain less information, and thus pruned results can be easily reproduced. Besides, we experimentally show that weights with high-rank feature maps contain more important information, such that even when a portion is not updated, very little damage would be done to the model performance. Without introducing any additional constraints, HRank leads to significant improvements over the state-of-the-arts in terms of FLOPs and parameters reduction, with similar accuracies. For example, with ResNet-110, we achieve a 58.2%-FLOPs reduction by removing 59.2% of the parameters, with only a small loss of 0.14% in top-1 accuracy on CIFAR-10. With Res-50, we achieve a 43.8%-FLOPs reduction by removing 36.7% of the parameters, with only a loss of 1.17% in the top-1 accuracy on ImageNet. The codes can be available at https://github.com/lmbxmu/HRank.

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