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A fast and efficient multi-objective evolutionary learning scheme for fuzzy rule-based classifiers

机译:基于模糊规则的分类器的快速高效的多目标进化学习方案

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During the last years, multi-objective evolutionary algorithms (MOEAs) have been extensively used to generate fuzzy rule-based systems characterized by different trade-offs between accuracy and complexity. In this paper, we propose an MOEA-based approach to learn concurrently the rule and data bases of fuzzy rule-based classifiers (FRBCs). In particular, the rule bases are generated by exploiting a rule and condition selection (RCS) strategy, which selects a reduced number of rules from a heuristically generated set of candidate rules and a reduced number of conditions for each selected rule during the evolutionary process. RCS can be considered as a rule learning in a constrained search space. As regards the data base learning, the membership function parameters of each linguistic term used in the rules are learned concurrently to the application of RCS. We tested our approach on twenty-four classification benchmarks and compared our results with the ones obtained by two similar state-of-the-art MOEA-based approaches and by two wellknown non-evolutionary classification algorithms, namely FURIA and C4.5. Using nonparametric statistical tests, we show that our approach generates FRBCs with accuracy and complexity statistically comparable to, and sometimes better than, the ones generated by the two MOEA-based approaches, exploiting, however, only the 5% of the number of fitness evaluations used by these approaches. Further, the classifiers generated by our approach result to be more interpretable than the ones generated by the FURIA and C4.5 algorithms, while achieving the same accuracy level.
机译:在过去的几年中,多目标进化算法(MOEA)已被广泛用于生成基于模糊规则的系统,这些系统的特征在于准确性和复杂性之间的权衡取舍。在本文中,我们提出了一种基于MOEA的方法来同时学习基于模糊规则的分类器(FRBC)的规则和数据库。尤其是,规则库是通过利用规则和条件选择(RCS)策略生成的,该策略从启发式生成的候选规则集中选择数量减少的规则,并在进化过程中为每个选定规则选择数量减少的条件。 RCS可被视为在受限搜索空间中的规则学习。关于数据库学习,在规则中使用的每个语言术语的隶属函数参数是与RCS的应用同时学习的。我们在二十四个分类基准上测试了我们的方法,并将我们的结果与通过两种类似的基于MOEA的最新技术方法以及通过两种著名的非进化分类算法FURIA和C4.5获得的结果进行了比较。使用非参数统计检验,我们证明了我们的方法所生成的FRBC的准确性和复杂性在统计学上可与两种基于MOEA的方法所生成的FRBC相比,有时甚至更好,但是仅利用了适应性评估次数的5%这些方法使用的。此外,我们的方法生成的分类器比FURIA和C4.5算法生成的分类器更具可解释性,同时实现了相同的准确性。

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