2021
DOI: 10.48550/arxiv.2108.13591
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AIP: Adversarial Iterative Pruning Based on Knowledge Transfer for Convolutional Neural Networks

Jingfei Chang,
Yang Lu,
Ping Xue
et al.

Abstract: With the increase of structure complexity, convolutional neural networks (CNNs) take a fair amount of computation cost. Meanwhile, existing research reveals the salient parameter redundancy in CNNs. The current pruning methods can compress CNNs with little performance drop, but when the pruning ratio increases, the accuracy loss is more serious. Moreover, some iterative pruning methods are difficult to accurately identify and delete unimportant parameters due to the accuracy drop during pruning. We propose a n… Show more

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