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Optimization of Echo State Networks by Covariance Matrix Adaption Evolutionary Strategy

机译:协方差矩阵适应进化策略优化回声状态网络

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Echo state networks (ESNs) have been shown to be an effective alternative to conventional recurrent neural networks due to its simple training process and good fitting performance of time series modelling tasks. In the primary ESN principle, the random setting of reservoir is considered to be the main advantage of ESN. However, because of the randomly generated connectivity and weight parameters, appropriate setting of the structural parameters which can significantly influence the modelling accuracy is considered a key issue in building ESN models. Evolutionary Strategy (ES) has been shown being a powerful stochastic global optimization method. Moreover, covariance matrix adaption evolutionary strategy (CMA-ES) is an artistically and parallel search method which transforms the searching covariance matrix to guide the best search direction. This paper proposes a CMA-ES-ESN method to optimize several structural parameters of an ESN such as reservoir size, leak rate and spectral radius factor. Finally, the results are compared with those from the original ESN and GA-ESN, ESN optimized by genetic algorithm.
机译:由于其简单的训练过程和时间序列建模任务的良好拟合性能,已被证明对传统复发性神经网络的有效替代方案。在初级ESN原则中,水库随机设置被认为是ESN的主要优势。然而,由于随机产生的连接和权重参数,适当的结构参数设置可以显着影响建模精度的结构参数被认为是构建ESN模型的关键问题。进化战略已被证明是一种强大的随机全局优化方法。此外,协方差矩阵自适应进化策略(CMA-ES)是一种艺术性和并行搜索方法,其将搜索协方差矩阵转换以引导最佳搜索方向。本文提出了一种CMA-ES-ESN方法,用于优化诸如储层大小,泄漏率和光谱半径因子的若干结构参数。最后,将结果与原始ESN和GA-ESN的结果进行比较,ESN通过遗传算法优化。

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