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Performance evaluation of evolutionary multiobjective optimization algorithms for multiobjective fuzzy genetics-based machine learning

机译:基于多目标模糊遗传学的机器学习进化多目标优化算法性能评估

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Recently, evolutionary multiobjective optimization (EMO) algorithms have been utilized for the design of accurate and interpretable fuzzy rule-based systems. This research area is often referred to as multiobjective genetic fuzzy systems (MoGFS), where EMO algorithms are used to search for non-dominated fuzzy rule-based systems with respect to their accuracy and interpretability. In this paper, we examine the ability of EMO algorithms to efficiently search for Pareto optimal or near Pareto optimal fuzzy rule-based systems for classification problems. We use NSGA-II (elitist non-dominated sorting genetic algorithm), its variants, and MOEA/D (multiobjective evolutionary algorithm based on decomposition) in our multiobjective fuzzy genetics-based machine learning (MoFGBML) algorithm. Classification performance of obtained fuzzy rule-based systems by each EMO algorithm is evaluated for training data and test data under various settings of the available computation load and the granularity of fuzzy partitions. Experimental results in this paper suggest that reported classification performance of MoGFS in the literature can be further improved using more computation load, more efficient EMO algorithms, and/or more antecedent fuzzy sets from finer fuzzy partitions.
机译:最近,进化多目标优化(EMO)算法已被用于设计准确且可解释的基于模糊规则的系统。该研究领域通常被称为多目标遗传模糊系统(MoGFS),其中EMO算法用于就其准确性和可解释性搜索基于非统治性模糊规则的系统。在本文中,我们研究了EMO算法能够有效地搜索基于Pareto最优或接近Pareto最优模糊规则的分类问题系统。在我们的多目标模糊遗传学机器学习(MoFGBML)算法中,我们使用NSGA-II(精英非主导排序遗传算法),其变体和MOEA / D(基于分解的多目标进化算法)。在可用计算量和模糊分区的粒度的各种设置下,评估每种EMO算法获得的基于模糊规则的系统的分类性能,以训练数据和测试数据。本文的实验结果表明,可以通过使用更多的计算负荷,更有效的EMO算法和/或更精细的模糊分区中的更早的模糊集来进一步改善文献中报告的MoGFS分类性能。

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