Efficient Mini-batch Training for Echo State Networks

Chunyuan Zhang, Chao Liu, Jie Zhao
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引用次数: 1

Abstract

Echo state networks (ESNs) are generally optimized by the ordinary recursive least squares (ORLS) algorithm. Although ORLS has fast convergence, it can process only one sample per iteration, which makes ESNs difficult to scale to large datasets. To tackle this problem, a novel mini-batch RLS (MRLS) algorithm is proposed in this paper. On this basis, to prevent overfitting in the ESN training, an L1regularization method is suggested for MRLS. In addition, to make ESNs more suitable for time-varying tasks, an adaptive method of the forgetting factor is also introduced for MRLS. Experimental results of two time-series problems show that ESNs have faster processing speed and better convergence performance with MRLS than with ORLS. CCS CONCEPTS • Computing methodologies → Machine learning; Machine learning approaches; Neural networks; Machine learning; Learning settings; Batch learning.
回声状态网络的高效小批量训练
回声状态网络通常采用普通递归最小二乘(ORLS)算法进行优化。虽然ORLS具有快速收敛性,但每次迭代只能处理一个样本,这使得ESNs难以扩展到大型数据集。为了解决这个问题,本文提出了一种新的小批量RLS (MRLS)算法。在此基础上,为防止回声状态网络训练中的过拟合,对MRLS提出了1正则化方法。此外,为了使ESNs更适合时变任务,还引入了遗忘因子的自适应方法。两个时间序列问题的实验结果表明,与ORLS相比,MRLS具有更快的处理速度和更好的收敛性能。•计算方法→机器学习;机器学习方法;神经网络;机器学习;学习环境;批学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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