遗传规则选择作为模糊数据挖掘的后处理程序

H. Ishibuchi, Y. Nojima, I. Kuwajima
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引用次数: 7

摘要

研究了遗传规则选择作为一种后处理过程在模糊数据挖掘中的作用。在模糊数据挖掘中,通常使用规则评价准则从数值数据中启发式地提取大量模糊规则。然而,对于人类用户来说,理解成千上万的模糊规则是非常困难的。因此,当我们的任务是向人类用户呈现可理解的知识时,有必要减少提取模糊规则的数量。在本文中,我们使用遗传规则选择来减少提取的模糊规则的数量。通过计算实验,我们检验了遗传规则选择的效果。首先,我们提取满足最小支持度和置信度的模糊规则。以启发式方法从数值数据中提取出数以千计的模糊规则。然后应用遗传规则选择方法提取模糊规则。实验结果表明,遗传规则选择在不降低模糊规则分类精度的前提下,显著减少了模糊规则的提取数量
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Genetic Rule Selection as a Postprocessing Procedure in Fuzzy Data Mining
We examine the effect of genetic rule selection as a postprocessing procedure in fuzzy data mining. Usually a large number of fuzzy rules are extracted in a heuristic manner from numerical data using a rule evaluation criterion in fuzzy data mining. It is, however, very difficult for human users to understand thousands of fuzzy rules. Thus it is necessary to decrease the number of extracted fuzzy rules when our task is to present understandable knowledge to human users. In this paper, we use genetic rule selection to decrease the number of extracted fuzzy rules. Through computational experiments, we examine the effect of genetic rule selection. First we extract fuzzy rules that satisfy minimum support and confidence levels. Thousands of fuzzy rules are extracted from numerical data in a heuristic manner. Then we apply genetic rule selection to extracted fuzzy rules. Experimental results show that genetic rule selection significantly decreases the number of extracted fuzzy rules without degrading their classification accuracy
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