有效的自然进化策略

Yi Sun, Daan Wierstra, T. Schaul, J. Schmidhuber
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引用次数: 109

摘要

高效自然进化策略(eNES)是一种替代传统进化算法的新方法,它利用自然梯度来适应突变分布。与先前基于自然梯度的方法不同,eNES使用快速算法计算精确的Fisher信息矩阵的逆,从而提高了其进化梯度估计的鲁棒性和性能,即使在更高的维度上也是如此。eNES的其他新颖方面包括最优适应度基线和重要性混合(通过很少的适应度评估来更新种群的过程)。该算法在单峰和多峰基准测试中都产生竞争结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient natural evolution strategies
Efficient Natural Evolution Strategies (eNES) is a novel alternative to conventional evolutionary algorithms, using the natural gradient to adapt the mutation distribution. Unlike previous methods based on natural gradients, eNES uses a fast algorithm to calculate the inverse of the exact Fisher information matrix, thus increasing both robustness and performance of its evolution gradient estimation, even in higher dimensions. Additional novel aspects of eNES include optimal fitness baselines and importance mixing (a procedure for updating the population with very few fitness evaluations). The algorithm yields competitive results on both unimodal and multimodal benchmarks.
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