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Multi-objective Iterative Genetic Approach for Learning Fuzzy Classification Rules with Semantic-based Selection of the Best Rule

机译:基于语义选择的学习模糊分类规则的多目标迭代遗传方法

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The objective of this work is to present an improved version of a method to learn fuzzy classification rules from data by means of a multi-objective evolutionary algorithm and the iterative approach. The work presented here derives from a preliminary version previously proposed by the authors. In the previous version, the trade-off between accuracy and interpretability during the rule generation process is addressed by defining the accuracy objective, measured by the compatibility of the each rule with the examples and the interpretability objective, defined as the number of conditions in the rule. The best rule to be .inserted in the rule base in each iteration is selected among the non dominated solutions, using a criterion related to the accuracy of the rule base. In the new version of the method described here, we propose a new criterion for selecting the best rule, considering the semantic interpretability at the rule base level, specifically the number of fired rules. We also investigate a new form of calculation of the accuracy objective. The experiments show that the new version of the method proposed in this article achieves results that are equivalent to the ones of the previous version with relation to accuracy, although improving both the semantic interpretability at rule base level, evaluated as the number of rules firing at the same time and the complexity at the rule base level, measured as the number of rules and conditions in the rule base.
机译:这项工作的目的是借助多目标进化算法和迭代方法,提出一种从数据学习模糊分类规则的方法的改进版本。此处提供的工作来自提交人之前提出的初步版本。在以前的版本中,通过定义通过每个规则的兼容性测量的准确性目标来解决规则生成过程中的准确性和解释性之间的权衡,并通过示例和解释性目标来定义为条件的条件次数规则。使用与规则库的准确性相关的标准,在每个迭代中的规则库中选择的最佳规则。在这里描述的方法的新版本中,我们提出了一种用于选择最佳规则的新标准,考虑到规则基本级别的语义解释性,特别是触发规则的数量。我们还调查了一种新的准确性目标的形式。实验表明,本文提出的该方法的新版本实现了与准确性相关的先前版本等同于先前版本的结果,尽管在规则基础上提高了语义解释性,评估为射击的规则数量同一时间和规则基础级别的复杂性,以规则库中的规则和条件的数量为单位。

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