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A Genetic Algorithm-Based Approach for Classification Rule Discovery

机译:基于遗传算法的分类规则发现方法

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摘要

Data mining has as goal to extract knowledge from large databases. To extract this knowledge, a database may be considered as a large search space, and a mining algorithm as a search strategy. In general, a search space consists of an enormous number of elements, which make it is infeasible to search exhaustively. As a search strategy, genetic algorithms have been applied successfully in many fields. In this paper, we present a genetic algorithm-based approach for mining classification rules from large database. For emphasizing on predictive accuracy, comprehensibility and interestingness of the rules and simplifying the implementation of a genetic algorithm, we discuss detail the design of encoding, genetic operator and fitness function of genetic algorithm for this task. Experimental result shows that genetic algorithm proposed in this paper is suitable for classification rule mining and those rules discovered by the algorithm have higher classification performance to unknown data.
机译:数据挖掘具有从大型数据库中提取知识的目标。为了提取这些知识,可以将数据库视为一个大的搜索空间,以及作为搜索策略的挖掘算法。通常,搜索空间由庞大数量的元素组成,这使得令人遗憾地搜索它是不可行的。作为搜索策略,遗传算法已成功应用于许多领域。在本文中,我们提出了一种基于遗传算法的大型数据库挖掘分类规则的方法。为了强调规则的预测准确性,可理解性和有趣,简化了遗传算法的实施,我们讨论了该任务遗传算法的编码,遗传算子和健身功能的详细信息。实验结果表明,本文提出的遗传算法适用于分类规则挖掘,并且算法发现的规则对未知数据具有更高的分类性能。

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