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Self-Organizing Maps and Scale-Invariant Maps in Echo State Networks

机译:回声状态网络中的自组织映射和尺度不变映射

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In the last years a new approach for designing and training artificial Recurrent Neural Network (RNN) have been investigated under the name of Reservoir Computing (RC). One important model in the field of RC has been developed under the name of Echo State Networks (ESNs). Traditionally, an ESN uses a RNN with random untrained parameters called the reservoir. The Self-Organizing Map (SOM) and the Scale Invariant Map (SIM) are two methods of topographic maps which have been used in different tasks of unsupervised learning. Recently, new works show that is effective using the SOM to set values of the reservoir parameters. The primary goal of this work is to improve the performance of ESN using the another method SIM. Here, we present the description of these two topographic map methods and the way to apply its on the ESN initialization. We specify an original algorithm to set the reservoir weights using the SOM and SIM. Furthermore, we use artificial data set to compare the use of topographic maps to initialize the ESN with random initialization. Overall, our results show the aptitude of SIM and SOM to set the reservoir parameters.
机译:近年来,已经研究了一种以水库计算(RC)的名义设计和训练人工递归神经网络(RNN)的新方法。在RC领域中,一种重要的模型已经以Echo State Networks(ESN)的名义开发出来。传统上,ESN使用带有未经训练的随机参数的RNN(称为水库)。自组织图(SOM)和尺度不变图(SIM)是地形图的两种方法,已用于无监督学习的不同任务中。最近,新的工作表明使用SOM设置储层参数值是有效的。这项工作的主要目标是使用另一种方法SIM来提高ESN的性能。在这里,我们介绍这两种地形图方法的描述以及将其应用于ESN初始化的方式。我们指定了一种原始算法来使用SOM和SIM来设置储层权重。此外,我们使用人工数据集来比较地形图的使用和随机初始化,以初始化ESN。总体而言,我们的结果表明SIM和SOM可以设置储层参数。

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