首页> 外文会议>Genetic and Evolutionary Fuzzy Systems (GEFS), 2010 >Embedding HILK in a three-objective evolutionary algorithm with the aim of modeling highly interpretable fuzzy rule-based classifiers
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Embedding HILK in a three-objective evolutionary algorithm with the aim of modeling highly interpretable fuzzy rule-based classifiers

机译:将HILK嵌入三目标进化算法中,旨在建模高度可解释的基于模糊规则的分类器

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HILK (Highly Interpretable Linguistic Knowledge) is a fuzzy modeling methodology especially thought for designing interpretable fuzzy rule-based systems. As starting point, it trusts on a domain expert able to define the most influential variables along with the most suitable number of linguistic terms for each of them. However, such task is not easy because problems often involve too many variables. To tackle with this problem, present paper proposes embedding HILK in a three-objective evolutionary algorithm (HILKMO) with the aim of making genetic feature selection and fuzzy partition learning. The use of two-objective (maximizing accuracy and interpretability) evolutionary algorithm has become very popular and effective when dealing with modeling interpretable fuzzy systems. There are also works dealing with three objectives but two of them are usually related to interpretability regarding only the readability of the system description. We have already emphasized, in previous works, the importance of addressing also the system comprehensibility. Therefore, the main contribution of this work is introducing two contradictory goals for characterizing interpretability: maximizing readability of the system explanation. The former objective prefers rules as compact as possible, while the latter one favors the use of rules with low interaction among them because rule interaction is difficult to explain. Both objectives are contradictory because the more compact the rule base, the higher the chance of having rules simultaneously fired by the same input vector. We have chosen NSGA-II as multi-objective evolutionary algorithm and our proposal is tested in the well-known GLASS benchmark problem.
机译:HILK(高度可解释的语言知识)是一种模糊建模方法,特别是用于设计可解释的基于模糊规则的系统。作为起点,它信任能够为每个变量定义最具影响力的变量以及最合适数量的语言术语的领域专家。但是,这样的任务并不容易,因为问题通常涉及太多的变量。为了解决这个问题,本文提出将HILK嵌入三目标进化算法(HILKMO),目的是进行遗传特征选择和模糊分区学习。在处理可解释的模糊系统建模时,使用两目标(最大化准确性和可解释性)进化算法已变得非常流行和有效。也有涉及三个目标的作品,但其中两个通常与仅系统描述的可读性有关的可解释性有关。在先前的工作中,我们已经强调了解决系统可理解性的重要性。因此,这项工作的主要贡献是引入了两个相互矛盾的目标来描述可解释性:最大化系统解释的可读性。前一个目标倾向于尽可能紧凑的规则,而后一个目标则倾向于使用相互之间具有较低交互性的规则,因为规则交互难以解释。这两个目标是矛盾的,因为规则库越紧凑,由同一输入向量同时触发规则的机会就越大。我们选择了NSGA-II作为多目标进化算法,并在众所周知的GLASS基准问题中对我们的建议进行了测试。

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