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Information Collection Strategies In Memetic Cooperative Neuroevolution For Time Series Prediction

机译:模因合作神经进化的时间序列预测信息收集策略

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Memetic algorithms have been a promising strategy to enhance neuroevolution in the past. Cooperative coevolution has been combined as memetic cooperative neuroevolution with application to chaotic time series prediction. Although the method has shown promising performance, there are limitations in the balance between global and local search. The previous study used a specific local search strategy for intensification that affected the diversity of solutions. In this study, we address this limitation by information (meme) collection strategies that maintains and refines a pool of memes during global search. We present two strategies where one is sequential and the other is concurrent meme collection implemented at different stages of evolution. In the majority of the given problems, the proposed strategies showed improvement in prediction accuracy over the related methods.
机译:模因算法在过去一直是增强神经进化的有前途的策略。合作协同进化已被结合为模因合作神经进化,并应用于混沌时间序列预测。尽管该方法显示出令人鼓舞的性能,但是在全局搜索和本地搜索之间的平衡上还是有局限性的。先前的研究使用了特定的本地搜索策略进行强化,从而影响了解决方案的多样性。在这项研究中,我们通过信息(模因)收集策略解决了这一局限,该策略在全局搜索过程中保持并完善了模因池。我们提出了两种策略,一种是顺序的,另一种是在进化的不同阶段实施的并发模因收集。在大多数给定的问题中,所提出的策略显示出相对于相关方法的预测准确性有所提高。

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