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Breeding swarms

机译:繁殖群

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摘要

This paper shows that a novel hybrid algorithm, Breeding Swarms, performs equal to, or better than, Genetic Algorithms and Particle Swarm Optimizers when training recurrent neural networks. The algorithm was found to be robust and scale well to very large networks, ultimately outperforming Genetic Algorithms and Particle Swarm Optimization in 79 of 80 tested networks. This research shows that the Breeding Swarm algorithm is a viable option when choosing an algorithm to train recurrent neural networks.
机译:本文表明,在训练递归神经网络时,一种新颖的混合算法“繁殖群”在性能上与遗传算法和粒子群优化器相当,甚至更好。发现该算法健壮并且可以很好地扩展到非常大的网络,最终在80个测试网络中的79个中胜过了遗传算法和粒子群优化。这项研究表明,在选择训练递归神经网络的算法时,繁殖群算法是一个可行的选择。

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