Effects of the Use of Multiple Fuzzy Partitions on the Search Ability of Multiobjective Fuzzy Genetics-Based Machine Learning

Y. Nojima, Yusuke Nakashima, H. Ishibuchi
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引用次数: 2

Abstract

An important issue in the design of fuzzy rule-based systems is to find a good accuracy-complexity tradeoff. While simple fuzzy systems with high interpretability are usually not accurate, complicated fuzzy systems with high accuracy are usually not interpretable. Recently evolutionary multiobjective optimization (EMO) algorithms have been used to search for simple and accurate fuzzy systems. The main advantage of EMO-based approaches over single-objective techniques is that a number of alternative fuzzy systems with different accuracy-complexity tradeoffs can be obtained by their single run. We have already proposed a multiobjective fuzzy genetics-based machine learning (GBML) algorithm for pattern classification problems. In our GBML algorithm, multiple fuzzy partitions with different granularities are simultaneously used. This is because we usually do not know an appropriate fuzzy partition for each input variable. However, the use of multiple fuzzy partitions significantly increases the size of the search space. In this paper, we examine the effect of the use of multiple fuzzy partitions on the search ability of our multiobjective fuzzy GBML algorithms through computational experiments.
使用多个模糊分区对多目标模糊遗传机器学习搜索能力的影响
在基于模糊规则的系统设计中,一个重要的问题是找到一个好的精度和复杂度的平衡点。具有高可解释性的简单模糊系统通常不准确,而具有高精度的复杂模糊系统通常是不可解释的。近年来,进化多目标优化(EMO)算法被用于寻找简单而精确的模糊系统。与单目标方法相比,基于emo的方法的主要优点是可以通过单次运行获得具有不同精度-复杂性权衡的多个备选模糊系统。我们已经提出了一种基于多目标模糊遗传的机器学习(GBML)算法用于模式分类问题。在我们的GBML算法中,同时使用了多个不同粒度的模糊分区。这是因为我们通常不知道每个输入变量的适当模糊划分。然而,使用多个模糊分区会显著增加搜索空间的大小。在本文中,我们通过计算实验检验了使用多个模糊分区对我们的多目标模糊GBML算法搜索能力的影响。
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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