分离低维信号驱动的回声状态网络装配

T. Iinuma, S. Nobukawa, S. Yamaguchi
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引用次数: 0

摘要

回声状态网络(ESN)由输入层、存储层和输出层组成,提供了比其他递归神经网络(rnn)更高的学习效率。在ESNs的设计中,与输入信号的维数相比,需要足够多的存储神经元。因此,为了获得良好的性能,必须增加高维输入的神经元数量。然而,神经元数量的增加增加了计算负荷。为了解决这个问题,我们提出了一种装配ESN (asesn)架构,该架构包括一个特征提取部分,该部分使用多个具有高维输入的分离组件的子ESN和一个特征集成部分。为了验证所提出的回声状态网络的有效性,我们研究并比较了高维输入下的传统回声状态网络和回声状态网络。结果表明,该方法在准确率、记忆性能和计算量等方面都优于传统的回声状态网络。我们认为asesn也具有正确的积分功能。因此,该方法有望以更高的精度解决高维问题。
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Assembly of Echo State Networks Driven by Segregated Low Dimensional Signals
An echo state network (ESN), consisting of an input layer, reservoir, and output layer, provides a higher learning-efficient approach than other recurrent neural networks (RNNs). In the design of ESNs, a sufficiently large number of reservoir neurons is required compared to the dimension of the input signal. Thus, the number of neurons must be increased for high-dimensional input to achieve good performance. However, an increase in the number of neurons increases the computational load. To solve this problem, we propose an assembly ESN (AESN) architecture comprising a feature extraction part that uses multiple sub-ESNs with segregated components of high-dimensional input and a feature integration part. To validate the effectiveness of the proposed AESN, we investigated and compared the conventional ESN with the AESN under high-dimensional input. The results show that the AESN is possibly superior to the conventional ESN in accuracy, memory performance, and computational load. We believe that the AESN also has a correct integration function. Therefore, the proposed method is expected to solve high-dimensional problems with improved accuracy.
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