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A Genetic-Programming-Based Approach for the Learning of Compact Fuzzy Rule-Based Classification Systems

机译:基于遗传编程的基于Compact Fuzzy规则的分类系统的基于遗传编程方法

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In the design of an interpretable fuzzy rule-based classification system (FRBCS) the precision as much as the simplicity of the extracted knowledge must be considered as objectives. In any inductive learning algorithm, when we deal with problems with a large number of features, the exponential growth of the fuzzy rule search space makes the learning process more difficult. Moreover it leads to an FRBCS with a rule base with a high cardinality. In this paper, we propose a genetic-programming-based method for the learning of an FRBCS, where disjunctive normal form (DNF) rules compete and cooperate among themselves in order to obtain an understandable and compact set of fuzzy rules, which presents a good classification performance with high dimensionality problems. This proposal uses a token competition mechanism to maintain the diversity of the population. The good results obtained with several classification problems support our proposal.
机译:在基于可解释的模糊规则的分类系统(FRBCS)的设计中,必须考虑提取知识简单的精度作为目标。在任何归纳学习算法中,当我们处理大量特征的问题时,模糊规则搜索空间的指数增长使得学习过程更加困难。此外,它导致FRBC具有高基数的规则基础。在本文中,我们提出了一种基于遗传编程的遗传编程方法,用于学习FRBCS,其中除虫正常形式(DNF)规则竞争和合作,以获得一个可理解和紧凑的模糊规则,这呈现出色具有高维度问题的分类性能。该提案使用令牌竞争机制来维持人口的多样性。通过若干分类问题获得的良好结果支持我们的建议。

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