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Optimizing echo state network with backtracking search optimization algorithm for time series forecasting

机译:优化回声状态网络与回溯搜索优化算法进行时间序列预测

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The echo state network (ESN) is a state-of-the art reservoir computing approach, which is particularly effective for time series forecasting problems because it is coupled with a time parameter. However, the linear regression algorithm commonly used to compute the output weights of ESN could usually cause the trained network over-fitted and thus obtain unsatisfactory results. To overcome the problem, we present four optimized ESNs that are based on the backtracking search optimization algorithm (BSA) or its variants to improve generalizability. Concretely, we utilize BSA and its variants to determine the most appropriate output weights of ESN given that the optimization problem is complex while BSA is a novel evolutionary algorithm that effectively unscrambles optimal solutions in complex spaces. The three BSA variants, namely, adaptive population selection scheme (APSS)-BSA, adaptive mutation factor strategy (AMFS)-BSA, and APSS&AMFS-BSA, were designed to further improve the performance of BSA. Time series forecasting experiments were performed using two real-life time series. The experimental results of the optimized ESNs were compared with those of the basic ESN without optimization, and the two other comparison approaches, as well as the other existing approaches. Experimental results showed that (a) the results of the optimized ESNs are more accurate than that of basic ESN and (b) APSS&AMFS-BSA-ESN nearly outperforms basic ESN, the three other optimized ESNs, the two comparison approaches, and other existing optimization approaches.
机译:回声状态网络(ESN)是一种最先进的储存器计算方法,其对时间序列预测问题特别有效,因为它与时间参数耦合。然而,通常用于计算ESN的输出权重的线性回归算法通常可以使训练的网络过度装配,从而获得不令人满意的结果。为了克服这个问题,我们提供了基于回溯搜索优化算法(BSA)的四个优化的ESN,或者其变体来提高概括性。具体而言,我们利用BSA及其变体来确定鉴于优化问题是复杂的ESN最合适的输出权重,而BSA是一种新型进化算法,有效地解除了复杂空间中的最佳解决方案。三种BSA变体,即自适应人口选择方案(APSS)-BSA,自适应突变因子策略(AMFS)和APS和AMFS-BSA,旨在进一步提高BSA的性能。使用两个现实生活时间序列进行时间序列预测实验。无需优化的基本ESN的实验结果与基本ESN的实验结果,以及其他两种比较方法以及其他现有方法。实验结果表明,(a)优化的ESNS的结果比基本ESN和(B)APSS-BSA-ESN的结果更准确,几乎优于基本ESN,三种其他优化ESN,两种比较方法和其他现有优化方法。

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