一种改进的模糊ARTMAP神经网络学习算法

G. Bartfai
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引用次数: 7

摘要

本文介绍了对模糊ARTMAP神经网络学习算法的两种改进。其中之一与网络处理输入模式及其相应的目标输出的时序有关。另一个是显式覆盖输入和输出类别之间的现有关联,以防输入完美匹配,但网络的预测是错误的。这两种修改都需要减少学习过程中“匹配跟踪异常”(MTA)的发生,并在训练后的网络中完全消除MTA。因此,训练时间也减少了,这可以通过网络在机器学习基准数据库上的性能来证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved learning algorithm for the fuzzy ARTMAP neural network
This article introduces two improvements to the learning algorithm of the fuzzy ARTMAP neural network. One of them is concerned with the timing according to which input patterns and their corresponding target output are processed by the network. The other one is the explicit overwriting of an existing association between an input and an output category in case the input is matched perfectly and yet the network's prediction is wrong. Both of these modifications are needed to reduce the occurrence of the "match tracking anomaly" (or MTA) during learning, and eliminate MTA altogether in a trained network. As a result, training time is also reduced, which is demonstrated through the performance of the network on a machine learning benchmark database.
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