2021
DOI: 10.48550/arxiv.2112.04905
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i-SpaSP: Structured Neural Pruning via Sparse Signal Recovery

Abstract: We propose a novel, structured pruning algorithm for neural networks-the iterative, Sparse Structured Pruning algorithm, dubbed as i-SpaSP. Inspired by ideas from sparse signal recovery, i-SpaSP operates by iteratively identifying a larger set of important parameter groups (e.g., filters or neurons) within a network that contribute most to the residual between pruned and dense network output, then thresholding these groups based on a smaller, pre-defined pruning ratio. For both two-layer and multi-layer networ… Show more

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