Search ability of evolutionary multiobjective optimization algorithms for multiobjective fuzzy genetics-based machine learning

H. Ishibuchi, Yusuke Nakashima, Y. Nojima
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引用次数: 9

Abstract

Recently evolutionary multiobjective optimization (EMO) algorithms have been actively used for the design of accurate and interpretable fuzzy rule-based systems. This research area is often referred to as multiobjective genetic fuzzy systems where EMO algorithms are used to search for a number of non-dominated fuzzy rule-based systems with respect to their accuracy and interpretability. The main advantage of the use of EMO algorithms for fuzzy system design over single-objective optimizers is that multiple alternative fuzzy rule-based systems with different accuracy-interpretability tradeoffs are obtained by their single run. The decision maker can choose a single fuzzy rule-based system according to their preference. There still exist several important issues to be discussed in this research area such as the definition of interpretability, the formulation of interpretability measures, the visualization of tradeoff relations, and the interpretability of the explanation of fuzzy reasoning results. In this paper, we discuss the ability of EMO algorithms as multiobjective optimizers to search for Pareto optimal or near Pareto optimal fuzzy rule-based systems. More specifically, we examine whether EMO algorithms can find non-dominated fuzzy rule-based systems that approximate the entire Pareto fronts of multiobjective fuzzy system design problems.
基于多目标模糊遗传的机器学习进化多目标优化算法的搜索能力
近年来,进化多目标优化(EMO)算法被广泛应用于设计精确的、可解释的模糊规则系统。这一研究领域通常被称为多目标遗传模糊系统,其中EMO算法用于搜索一些基于规则的非支配模糊系统,以考虑其准确性和可解释性。与单目标优化器相比,使用EMO算法进行模糊系统设计的主要优点是,通过单次运行可以获得具有不同精度-可解释性权衡的多个备选模糊规则系统。决策者可以根据自己的偏好选择单个模糊规则系统。可解释性的定义、可解释性测度的制定、权衡关系的可视化、模糊推理结果解释的可解释性等问题仍是该研究领域有待探讨的重要问题。本文讨论了EMO算法作为多目标优化器搜索Pareto最优或接近Pareto最优模糊规则系统的能力。更具体地说,我们研究了EMO算法是否可以找到近似多目标模糊系统设计问题的整个帕累托前沿的非支配模糊规则系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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