基于前瞻搜索引导强化学习的信道修剪

Z. Wang, Chengcheng Li
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引用次数: 11

摘要

信道修剪已成为实现紧凑神经网络的有效方法,但仍具有挑战性。它的目的是修剪一组最优的过滤器,这些过滤器的删除导致精简网络的性能下降最小。由于过滤器组合的搜索空间非常大,现有的方法通常使用各种标准来估计过滤器的重要性,同时牺牲一些精度。本文提出了一种基于前瞻搜索引导强化学习(RL)的通道剪枝滤波器选择优化方法。将输入滤波器相关特征作为神经网络,用强化学习进行训练,以修剪最优的滤波器序列,并使剩余网络的性能最大化。此外,我们采用蒙特卡罗树搜索(MCTS)为过滤器选择提供前瞻性搜索,从而提高了强化学习训练的样本效率。在MNIST、CIFAR-10和ILSVRC-2012上的实验验证了我们的方法与传统和自动化现有信道修剪方法相比的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Channel Pruning via Lookahead Search Guided Reinforcement Learning
Channel pruning has become an effective yet still challenging approach to achieve compact neural networks. It aims to prune the optimal set of filters whose removal results in minimal performance degradation of the slimmed network. Due to the prohibitively vast search space of filter combinations, existing approaches usually use various criteria to estimate the filter importance while sacrificing some precision. Here we present a new approach to optimizing the filter selection in channel pruning with lookahead search guided reinforcement learning (RL). A neural network that takes as input filterrelated features is trained with RL to prune the optimal sequence of filters and maximize the performance of the remaining network. In addition, we employ Monte Carlo tree search (MCTS) to provide a lookahead search for filter selection, which increases the sample efficiency for the RL training. Experiments on MNIST, CIFAR-10, and ILSVRC-2012 validate the effectiveness of our approach compared to both traditional and automated existing channel pruning approaches.
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