CVOct 16, 2021

Neural Network Pruning Through Constrained Reinforcement Learning

arXiv:2110.08558v21 citations
AI Analysis

This work addresses the challenge of efficient neural network deployment for resource-constrained environments, offering a general method that is incremental but practical.

The paper tackles the problem of pruning neural networks to meet computational budgets by proposing a constrained reinforcement learning strategy, achieving up to 92.90% parameter reduction on VGG variants with comparable or better performance and 75.09% reduction on ResNet18 without accuracy loss.

Network pruning reduces the size of neural networks by removing (pruning) neurons such that the performance drop is minimal. Traditional pruning approaches focus on designing metrics to quantify the usefulness of a neuron which is often quite tedious and sub-optimal. More recent approaches have instead focused on training auxiliary networks to automatically learn how useful each neuron is however, they often do not take computational limitations into account. In this work, we propose a general methodology for pruning neural networks. Our proposed methodology can prune neural networks to respect pre-defined computational budgets on arbitrary, possibly non-differentiable, functions. Furthermore, we only assume the ability to be able to evaluate these functions for different inputs, and hence they do not need to be fully specified beforehand. We achieve this by proposing a novel pruning strategy via constrained reinforcement learning algorithms. We prove the effectiveness of our approach via comparison with state-of-the-art methods on standard image classification datasets. Specifically, we reduce 83-92.90 of total parameters on various variants of VGG while achieving comparable or better performance than that of original networks. We also achieved 75.09 reduction in parameters on ResNet18 without incurring any loss in accuracy.

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