利用局部搜索学习异质协同语言模糊规则:增强COR搜索空间

Javier Cózar, L. D. L. Ossa, J. A. Gamez
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引用次数: 1

摘要

COR方法允许通过考虑规则之间的合作来学习基于语言模糊规则的系统。为了做到这一点,COR首先找到可以由训练集中的示例触发的候选模糊规则集,然后使用搜索算法找到最终的规则集。在目前提出的算法中,所有候选规则具有相同数量的前项,即输入变量的数量。然而,这些规则可能过于具体,而不考虑更通用的规则。在本文中,我们研究了考虑所有可能规则的效果,而不管它们的前因式的数量。实验表明,该规则库使用了更简单的规则,其预测误差较经典的COR方法有所改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning heterogeneus cooperative linguistic fuzzy rules using local search: Enhancing the COR search space
The COR methodology allows the learning of Linguistic Fuzzy Rule-Based Systems by considering cooperation among rules. In order to do that, COR firstly finds the set of candidate fuzzy rules that can be fired by the examples in the training set, and then uses a search algorithm to find the final set of rules. In the algorithms proposed so far, all candidate rules have the same number of antecedents, which is the number of input variables. However, these rules could be too specific, and rules more generic are not considered. In this paper we study the effect of considering all posible rules, regardeless of their number of antecedents. Experiments show that the rule bases obtained use simpler rules, and the results for the error of prediction improve upon those obtained by using classical COR methods.
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