首页> 外文期刊>Applied Artificial Intelligence >ARMGA: IDENTIFYING INTERESTING ASSOCIATION RULES WITH GENETIC ALGORITHMS
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ARMGA: IDENTIFYING INTERESTING ASSOCIATION RULES WITH GENETIC ALGORITHMS

机译:阿玛加:使用遗传算法识别有趣的协会规则

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摘要

Priori-like algorithms for association rules mining have relied on two user-specified thresholds: minimum support and minimum confidence. There are two significant challenges to applying these algorithms to real-world applications: database-dependent minimum-support and exponential search space. Database-dependent minimum-support means that users must specify suitable thresholds/or their mining tasks though they may have no knowledge concerning their databases. To circumvent these problems, in this paper, we design an evolutionary mining strategy, namely the ARMGA model, based on a genetic algorithm. Like general genetic algorithms, our ARMGA model is effective for global searching, especially when the search space is so large that it is hardly possible to use deterministic searching method.
机译:关联规则挖掘的类似先验的算法依赖于两个用户指定的阈值:最小支持和最小置信度。将这些算法应用于实际应用程序存在两个重大挑战:与数据库有关的最小支持和指数搜索空间。依赖数据库的最低支持意味着用户必须指定合适的阈值/或他们的挖掘任务,尽管他们可能不了解其数据库。为了解决这些问题,本文设计了一种基于遗传算法的进化挖掘策略,即ARMGA模型。像一般的遗传算法一样,我们的ARMGA模型对于全局搜索是有效的,尤其是当搜索空间很大而几乎无​​法使用确定性搜索方法时。

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