REPrune: Channel Pruning via Kernel Representative Selection

Authors
Park, MincheolKim, DongjinPark, CheonjunPark, YunaGong, Gyeong EunRo, Won WooKim, Suhyun
Issue Date
2024-02
Publisher
ASSOC ADVANCEMENT ARTIFICIAL INTELLIGENCE
Citation
38th AAAI Conference on Artificial Intelligence (AAAI) / 36th Conference on Innovative Applications of Artificial Intelligence / 14th Symposium on Educational Advances in Artificial Intelligence, pp.14545 - 14553
Abstract
Channel pruning is widely accepted to accelerate modern convolutional neural networks (CNNs). The resulting pruned model benefits from its immediate deployment on general-purpose software and hardware resources. However, its large pruning granularity, specifically at the unit of a convolution filter, often leads to undesirable accuracy drops due to the inflexibility of deciding how and where to introduce sparsity to the CNNs. In this paper, we propose REPrune, a novel channel pruning technique that emulates kernel pruning, fully exploiting the finer but structured granularity. REPrune identifies similar kernels within each channel using agglomerative clustering. Then, it selects filters that maximize the incorporation of kernel representatives while optimizing the maximum cluster coverage problem. By integrating with a simultaneous training-pruning paradigm, REPrune promotes efficient, progressive pruning throughout training CNNs, avoiding the conventional train-prune-finetune sequence. Experimental results highlight that REPrune performs better in computer vision tasks than existing methods, effectively achieving a balance between acceleration ratio and performance retention.
ISSN
2159-5399
URI
https://pubs.kist.re.kr/handle/201004/150396
Appears in Collections:
KIST Conference Paper > 2024
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