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Identification of interpretable and accurate fuzzy classifiers and function estimators with hybrid methods

机译:用混合方法识别可解释且准确的模糊分类器和函数估计器

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This paper studies the identification of fuzzy classifiers and function estimators focusing on improving their interpretability while maintaining their accuracy. Advances of various methods, such as, input variable selection, appropriate initialization algorithms, evolutionary algorithms and simplification techniques are hybridized to form a framework capable of identifying interpretable and accurate fuzzy models (FMs). FMs are initialized by two algorithms. Modified Gath-Geva (MGG) is used for function estimation and C4.5 for classification problems. The initialized FMs go through a three-step GA-based optimization, in which the adequate structure and parameters of FMs are searched. The proposed fitness function makes the favoring of simple FMs possible. Furthermore, the rule base is made more comprehensible by reducing the number of conditions in the rules. The validity of FMs is verified through studying several well-known benchmark problems. The results indicate, that by means of the proposed framework, interpretable, yet accurate FMs are obtained.
机译:本文研究模糊分类器和函数估计器的识别,着重于在保持其准确性的同时提高其可解释性。诸如输入变量选择,适当的初始化算法,进化算法和简化技术之类的各种方法的进步被混合在一起,形成了一个能够识别可解释和准确的模糊模型(FM)的框架。 FM由两种算法初始化。改进的Gath-Geva(MGG)用于函数估计,而C4.5用于分类问题。初始化的FM经过三步基于GA的优化,在其中搜索FM的适当结构和参数。拟议的适应度函数使简单FM成为可能。此外,通过减少规则中的条件数量,可以使规则库更易于理解。通过研究几个众所周知的基准问题,可以验证FM的有效性。结果表明,通过提出的框架,可以获得可解释但准确的FM。

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