数据约简对并行分布式遗传模糊规则选择泛化能力的影响

Y. Nojima, H. Ishibuchi
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引用次数: 6

摘要

利用遗传模糊规则选择成功地设计了精确的、可解释的数值模糊分类器。在我们之前的研究中,我们提出了它的并行分布式实现,通过将总体和训练数据集划分为子组,可以大大减少计算时间。在本文中,我们研究了数据约简对采用并行分布式方法设计的模糊规则分类器泛化能力的影响。通过计算实验,我们证明了所设计的模糊分类器可以在不严重降低其泛化能力的情况下实现数据约简。
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Effects of Data Reduction on the Generalization Ability of Parallel Distributed Genetic Fuzzy Rule Selection
Genetic fuzzy rule selection has been successfully used to design accurate and interpretable fuzzy classifiers from numerical data. In our former study, we proposed its parallel distributed implementation which can drastically decrease the computational time by dividing both a population and a training data set into sub-groups. In this paper, we examine the effect of data reduction on the generalization ability of fuzzy rule-based classifiers designed by our parallel distributed approach. Through computational experiments, we show that data reduction can be realized without severe deterioration in the generalization ability of the designed fuzzy classifiers.
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