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Using genetic algorithms to evolve a rule hierarchy

机译:使用遗传算法发展规则层次

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This paper describes the implementation and the functioning of RAGA (Rule Acquisition with a Genetic Algorithm),a genetic-algorithm-based data mining system suitable for both supervised and certain types of unsupervised knowledge extraction from large and possibly noisy databases.The genetic engine is modified through the addition of several methods tuned specifically for the task of association rule discovery.A set of genetic operators and techniques are employed to efficiently search the space of potential rules.During this process,RAGA evolves a default hierarchy of rules,where teh emphasis is placed ont he group rather than each individual rule.Rule sets of this type are kept simple in both individual rule complexity and the total number of rules are kept simple in both individual rule complexity and the total number of rules that are required.In addition,the default hierarchy deals with the problem of over-fitting,particularly in classification tasks.Several data mining experiments using RAGA are described.
机译:本文描述了基于遗传算法的RAGA(基于遗传算法的规则获取)的实现和功能,该系统适用于从大型且可能是嘈杂的数据库中提取有监督和某些类型的无监督知识。通过添加一些专门针对关联规则发现任务而调整的方法进行了修改。采用了一组遗传算子和技术来有效地搜索潜在规则的空间。在此过程中,RAGA会演化出默认规则层次结构,其中重点是放在每个组而不是每个单独的规则上。此类规则集在单个规则复杂度上都保持简单,而在单个规则复杂度和所需规则总数上都使规则总数保持简单。 ,默认层次结构会解决过度拟合的问题,尤其是在分类任务中。多个数据挖掘实验描述了使用RAGA的过程。

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