深回声状态网络的存储容量分析

Xuanlin Liu, Mingzhe Chen, Changchuan Yin, W. Saad
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引用次数: 6

摘要

本文分析了一种新型深度网络的回声状态网络(ESN)记忆容量,即回声状态网络可以存储的输入数据量。特别地,研究了两种深度回声状态网络架构。首先,提出了一种并联深度回声状态网络,其中多个储层并联连接,使其能够平均多个回声状态网络的输出,从而降低了预测误差。然后,提出了一种串联结构的ESN库,其中每个ESN库的输出是该串联中下一个ESN的输入。这种串联回声状态网络架构可以捕获更多输入序列和输出序列之间的特征,从而提高整体的预测精度。基础分析表明,并联ESN的记忆容量与传统浅ESN相当,串联ESN的记忆容量小于传统浅ESN。在归一化均方根误差方面,仿真结果表明,与传统浅层回声状态网络相比,并行深度回声状态网络减少了38.5%,而串联深度回声状态网络减少了16.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Memory Capacity for Deep Echo State Networks
In this paper, the echo state network (ESN) memory capacity, which represents the amount of input data an ESN can store, is analyzed for a new type of deep ESNs. In particular, two deep ESN architectures are studied. First, a parallel deep ESN is proposed in which multiple reservoirs are connected in parallel allowing them to average outputs of multiple ESNs, thus decreasing the prediction error. Then, a series architecture ESN is proposed in which ESN reservoirs are placed in cascade that the output of each ESN is the input of the next ESN in the series. This series ESN architecture can capture more features between the input sequence and the output sequence thus improving the overall prediction accuracy. Fundamental analysis shows that the memory capacity of parallel ESNs is equivalent to that of a traditional shallow ESN, while the memory capacity of series ESNs is smaller than that of a traditional shallow ESN. In terms of normalized root mean square error, simulation results show that the parallel deep ESN achieves 38.5% reduction compared to the traditional shallow ESN while the series deep ESN achieves 16.8% reduction.
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