2021
DOI: 10.48550/arxiv.2101.06407
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ACP: Automatic Channel Pruning via Clustering and Swarm Intelligence Optimization for CNN

Abstract: As the convolutional neural network (CNN) gets deeper and wider in recent years, the requirements for the amount of data and hardware resources have gradually increased. Meanwhile, CNN also reveals salient redundancy in several tasks. The existing magnitude-based pruning methods are efficient, but the performance of the compressed network is unpredictable. While the accuracy loss after pruning based on the structure sensitivity is relatively slight, the process is time-consuming and the algorithm complexity is… Show more

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“…Hence, some attempts have been made based on evolutionary optimization methods, which offer alternative filter pruning approaches for network compression. These approaches [14,23,29,37,[52][53][54][55] search for optimal solutions (for instance, selecting informative filters while rejecting the weak filters) and, consequently, can lead to a compressed network. However, despite the satisfying performance, the approaches are still not computationally efficient at runtime.…”
Section: Introductionmentioning
confidence: 99%
“…Hence, some attempts have been made based on evolutionary optimization methods, which offer alternative filter pruning approaches for network compression. These approaches [14,23,29,37,[52][53][54][55] search for optimal solutions (for instance, selecting informative filters while rejecting the weak filters) and, consequently, can lead to a compressed network. However, despite the satisfying performance, the approaches are still not computationally efficient at runtime.…”
Section: Introductionmentioning
confidence: 99%