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A Hybrid Algorithm Combined Genetic Algorithm with Information Entropy for Data Mining

机译:信息熵与遗传算法相结合的混合算法

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摘要

This paper proposes a data mining algorithm based on genetic algorithm and entropy for rule discovery called Genetic- Miner. The goal of Genetic-Miner is to discover classification rules in data sets. We have compared the performance of Genetic-Miner with other two well-known algorithms in six public domain data sets. The results showed that, Genetic-Miner is particularly advantageous when it is important to minimize the number of discovered rules and rule terms in order to improve comprehensibility of the discovered knowledge.
机译:本文提出了一种基于遗传算法和熵的规则挖掘数据挖掘算法Genetic-Miner。 Genetic-Miner的目标是发现数据集中的分类规则。我们已经在六个公共领域的数据集中比较了Genetic-Miner和其他两个著名算法的性能。结果表明,当最小化发现的规则和规则项的数量以提高发现的知识的可理解性时,Generic-Miner尤其有利。

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