Advanced Learning of SOR Network Employing Evaluation-based Topology Representing Network

T. Yamakawa, K. Horio, Takahiro Tanaka
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Abstract

Learning systems such as multi-layer feed-forward neural networks, wavelet networks and so on need appropriate learning data (input data and teaching output data). These methods are not so useful in case when we cannot get the appropriate learning data. Even in this case, it is not so difficult to evaluate the system output for arbitrarily applied input. The learning data of input-output pairs with their evaluations are easily obtained and thus is easily used for modeling the system. SOR (self-organizing relationship) network is a modeling tool, which can be established by a set of input-output data and corresponding evaluation. This SOR network can act as a knowledge acquisition system and also act as a fuzzy inference engine. The linkage among the units in competitive layer is fixed and not flexible, and thus not used for complicated systems. In this plenary talk, the advanced learning process is presented for the original SOR network by employing evaluation-based TRN (topology representing network). By this learning, the linkage among the units in the competitive layer can be more flexible and thus used for modeling of much more complicated systems. The application of the SOR network established by this learning process to a manipulation control is also presented.
基于评估的拓扑表示网络的SOR网络高级学习
多层前馈神经网络、小波网络等学习系统需要适当的学习数据(输入数据和教学输出数据)。当我们无法获得合适的学习数据时,这些方法就不那么有用了。即使在这种情况下,评估任意输入的系统输出也不是那么困难。输入输出对的学习数据及其评价很容易获得,因此很容易用于系统建模。SOR(自组织关系)网络是一种建模工具,它可以通过一组输入输出数据和相应的评价来建立。该SOR网络既可以作为知识获取系统,也可以作为模糊推理机。竞争层单元之间的联系是固定的,不灵活的,因此不用于复杂的系统。在这次全体会议上,通过采用基于评估的TRN(拓扑表示网络),介绍了原始SOR网络的高级学习过程。通过这种学习,竞争层中单元之间的联系可以更加灵活,从而用于更复杂系统的建模。最后,介绍了基于此学习过程建立的SOR网络在操作控制中的应用。
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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