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We propose a variational Bayesian scheme for pruning convolutional neural networks in channel level. This idea is motivated by the fact that deterministic value based pruning methods are inherently improper and unstable. In a nutshell, variational technique is introduced to estimate distribution of a newly proposed parameter, called channel saliency, based on this, redundant channels can be removed from model via a simple criterion. The advantages are two-fold: 1) Our method conducts channel pruning without desire of re-training stage, thus improving the computation efficiency. 2) Our method is implemented as a stand-alone module, called variational pruning layer, which can be straightforwardly inserted into off-the-shelf deep learning packages, without any special network design. Extensive experimental results well demonstrate the effectiveness of our method: For CIFAR-10, we perform channel removal on different CNN models up to 74\% reduction, which results in significant size reduction and computation saving. For ImageNet, about 40% channels of ResNet-50 are removed without compromising accuracy.
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Zhao et al. (Sat,) studied this question.
www.synapsesocial.com/papers/69e77eb5c849088a2ccb1883 — DOI: https://doi.org/10.1109/cvpr.2019.00289
Synapse has enriched one closely related paper. Consider it for comparative context:
Chenglong Zhao
Bingbing Ni
Jian Zhang
Shanghai Jiao Tong University
Huawei Technologies (Sweden)
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