Neural Network Panning: Screening the Optimal Sparse Network Before Training

Xiatao Kang, P. Li, Jiayi Yao, Chengxi Li
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引用次数: 0

Abstract

Pruning on neural networks before training not only compresses the original models, but also accelerates the network training phase, which has substantial application value. The current work focuses on fine-grained pruning, which uses metrics to calculate weight scores for weight screening, and extends from the initial single-order pruning to iterative pruning. Through these works, we argue that network pruning can be summarized as an expressive force transfer process of weights, where the reserved weights will take on the expressive force from the removed ones for the purpose of maintaining the performance of original networks. In order to achieve optimal expressive force scheduling, we propose a pruning scheme before training called Neural Network Panning which guides expressive force transfer through multi-index and multi-process steps, and designs a kind of panning agent based on reinforcement learning to automate processes. Experimental results show that Panning performs better than various available pruning before training methods.
神经网络规划:训练前筛选最优稀疏网络
神经网络训练前的剪枝不仅压缩了原始模型,而且加快了网络训练阶段,具有重要的应用价值。目前的工作重点是细粒度剪枝,它使用度量来计算权重分数进行权重筛选,并从最初的单阶剪枝扩展到迭代剪枝。通过这些工作,我们认为网络修剪可以概括为一个权值的表达力传递过程,其中保留的权值将承担被删除权值的表达力,以保持原始网络的性能。为了实现最优的表达力调度,提出了一种训练前修剪方案——神经网络平移,通过多指标、多过程的步骤引导表达力传递,并设计了一种基于强化学习的平移智能体实现过程自动化。实验结果表明,Panning的训练效果优于现有的各种训练前修剪方法。
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