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Pruning Neural Networks with Distribution Estimation Algorithms

机译:具有分布估计算法的修剪神经网络

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This paper describes the application of four evolutionary algorithms to the pruning of neural networks used in classification problems. Besides of a simple genetic algorithm (GA), the paper considers three distribution estimation algorithms (DEAs): a compact GA, an extended compact GA, and the Bayesian Optimization Algorithm. The objective is to determine if the DEAs present advantages over the simple GA in terms of accuracy or speed in this problem. The experiments considered a feedforward neural network trained with standard backpropagation and 15 public-domain and artificial data sets. In most cases, the pruned networks seemed to have better or equal accuracy than the original fully-connected networks. We found few differences in the accuracy of the networks pruned by the four EAs, but found large differences in the execution time. The results suggest that a simple GA with a small population might be the best algorithm for pruning networks on the data sets we tested.
机译:本文介绍了四种进化算法在分类问题中使用的神经网络修剪中的应用。除了一个简单的遗传算法(GA)之外,该纸张考虑了三种分布估计算法(DEAS):Compact GA,扩展的Compact Ga和贝叶斯优化算法。目的是确定在这个问题中的准确性或速度方面还可以在简单的GA方面存在优势。该实验考虑了具有标准背交和15个公共域和人工数据集接受培训的前馈神经网络。在大多数情况下,修剪网络似乎具有比原始全连接网络更好或更精度。我们发现四个EAS修剪的网络的准确性的差异很少,但在执行时间内发现了很大的差异。结果表明,具有小人口的简单GA可能是我们测试的数据集上的修剪网络中的最佳算法。

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