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Towards Hebbian learning of Fuzzy Cognitive Maps in pattern classification problems

机译:面向模式分类问题的模糊认知图的Hebbian学习

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A detailed comparative analysis of the Hebbian-like learning algorithms applied to train Fuzzy Cognitive Maps (FCMs) operating as pattern classifiers, is presented in this paper. These algorithms aim to find appropriate weights between the concepts of the FCM classifier so it equilibrates to a desired state (class mapping). For these purposes, six different types of Hebbian learning algorithms from the literature have been selected and studied in this work. Along with the theoretical description of these algorithms and the analysis of their performance in classifying known patterns, a sensitivity analysis of the applied classification scheme, regarding some configuration parameters have taken place. It is worth noting that the algorithms are studied in a comparative fashion, under common configurations for several benchmark pattern classification datasets, by resulting to useful conclusions about their training capabilities.
机译:本文详细介绍了类似Hebbian学习算法的比较分析,该算法用于训练作为模式分类器的模糊认知图(FCM)。这些算法旨在在FCM分类器的概念之间找到适当的权重,以使其平衡到所需状态(类映射)。为了这些目的,从文献中选择并研究了六种不同类型的Hebbian学习算法。除了对这些算法的理论描述以及对已知模式进行分类的性能分析之外,还对某些配置参数进行了应用分类方案的敏感性分析。值得注意的是,通过对几种基准模式分类数据集的通用配置,以比较的方式研究了这些算法,得出了有关其训练能力的有用结论。

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