Evolutionary multiobjective optimization and multiobjective fuzzy system design

H. Ishibuchi
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引用次数: 3

Abstract

Evolutionary multiobjective optimization (EMO) is one of the most active research areas in evolutionary computation. EMO algorithms have been successfully used in various application areas. Among them are multiobjective design of neural networks and fuzzy systems. Especially, fuzzy system design has often been discussed as multiobjective problems. This is because we have two conflicting objectives in the design of fuzzy systems: accuracy maximization and complexity minimization. In this paper, we first explain some basic concepts in multiobjective optimization, a basic framework of EMO algorithms and some hot research issues in the EMO community. Next we explain EMO-based approaches to the design of fuzzy systems. We demonstrate through computational experiments that a large number of non-dominated fuzzy systems with different accuracy-complexity tradeoffs can be obtained by a single run of an EMO algorithm. Then we describe the use of EMO algorithms in other areas such as neural networks, genetic programming, clustering, feature selection, and data mining.
进化多目标优化与多目标模糊系统设计
进化多目标优化(EMO)是进化计算中最活跃的研究领域之一。EMO算法已成功地应用于各个应用领域。其中包括神经网络和模糊系统的多目标设计。特别是,模糊系统设计常常作为多目标问题来讨论。这是因为我们在设计模糊系统时有两个相互冲突的目标:精度最大化和复杂性最小化。本文首先阐述了多目标优化中的一些基本概念、EMO算法的基本框架以及EMO学界的一些研究热点问题。接下来,我们将解释基于emo的模糊系统设计方法。我们通过计算实验证明,通过单次运行EMO算法可以获得大量具有不同精度-复杂性权衡的非主导模糊系统。然后描述了EMO算法在神经网络、遗传规划、聚类、特征选择和数据挖掘等其他领域的应用。
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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