基于循环神经网络的选择性动态主成分分析

Mona Noori Hosseini, S. Gharibzadeh, P. Gifani, S. Babaei, B. Makki
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引用次数: 1

摘要

在过去的几十年里,相当多的注意力集中在生物启发系统的发展上。本文利用基底神经节(BG)的信息处理原理,提出了一种选择性提取多维数据集动态主成分(DPCs)的新方法。通过自关联神经网络的电流结构提取dpc,并通过类强化信号修改网络的期望输出和学习系数来实现选择性。通过两个实验对模型的性能进行了评价;首先提取了一个股票价格数据库的DPCs,然后对该方法的语音压缩能力进行了检验,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Selective Dynamic Principal Component Analysis Using Recurrent Neural Networks
In the last decades, considerable attention has been focused on development of bio-inspired systems. This paper employs the principals of information processing in the Basal Ganglia (BG) to develop a new method for selectively extracting dynamic principal components (DPCs) of multidimensional datasets. The DPCs are extracted by are current structure of auto-associative neural network and selectivity is achieved by means of a reinforcement-like signal which modifies the desired outputs and the learning coefficient of the network. Performance of the model is evaluated through two experiments; at first, the DPCs of a stock price database are extracted and then, speech compression capability of the method is checked which illustrates the efficiency of the proposed approach.
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