CVAILGOct 26, 2021

CHIP: CHannel Independence-based Pruning for Compact Neural Networks

arXiv:2110.13981v3178 citationsHas Code
Originality Incremental advance
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This work addresses the need for more efficient neural networks for deployment in resource-constrained environments, offering an incremental improvement over existing pruning methods by focusing on inter-channel correlations.

The paper tackles the problem of neural network compression by proposing CHIP, a filter pruning method based on channel independence to measure correlations among feature maps, achieving accuracy increases of up to 0.94% on CIFAR-10 and 0.15% on ImageNet while reducing model size and FLOPs by over 40%.

Filter pruning has been widely used for neural network compression because of its enabled practical acceleration. To date, most of the existing filter pruning works explore the importance of filters via using intra-channel information. In this paper, starting from an inter-channel perspective, we propose to perform efficient filter pruning using Channel Independence, a metric that measures the correlations among different feature maps. The less independent feature map is interpreted as containing less useful information$/$knowledge, and hence its corresponding filter can be pruned without affecting model capacity. We systematically investigate the quantification metric, measuring scheme and sensitiveness$/$reliability of channel independence in the context of filter pruning. Our evaluation results for different models on various datasets show the superior performance of our approach. Notably, on CIFAR-10 dataset our solution can bring $0.90\%$ and $0.94\%$ accuracy increase over baseline ResNet-56 and ResNet-110 models, respectively, and meanwhile the model size and FLOPs are reduced by $42.8\%$ and $47.4\%$ (for ResNet-56) and $48.3\%$ and $52.1\%$ (for ResNet-110), respectively. On ImageNet dataset, our approach can achieve $40.8\%$ and $44.8\%$ storage and computation reductions, respectively, with $0.15\%$ accuracy increase over the baseline ResNet-50 model. The code is available at https://github.com/Eclipsess/CHIP_NeurIPS2021.

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