Rule refinement with extended data expression

Jung Min Kong, Dong-Hun Seo, W. Lee
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引用次数: 10

Abstract

The rule refinement problem has been known to be one of the most difficult and complex problems. This paper presents a systematic rule refinement method that deals with the old rule directly with the new data, for the first time. To be able to do the rule refinement, the data are represented in the extended data expression, where an event has its weight of importance. To show how this can be done systematically, a decision tree classifier is used for the rule refinement. The weights of the events of the former rule are adjusted according to the depth of the tree merged with the collected new data set to form the new rule. Experiment shows that this approach, with properly designing the weight assignment procedure, is promising to enhance the performance of the inference engine by generating a rule with higher accuracy than the one from new data set only.
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使用扩展数据表达式进行规则细化
规则细化问题一直被认为是最困难和最复杂的问题之一。本文首次提出了用新数据直接处理旧规则的系统规则细化方法。为了能够进行规则细化,数据在扩展数据表达式中表示,其中事件具有其重要性权重。为了展示如何系统地做到这一点,我们使用决策树分类器进行规则细化。前一规则的事件权重根据树的深度与收集到的新数据集合并形成新规则。实验表明,该方法通过合理设计权值分配过程,生成比仅从新数据集生成的规则具有更高精度的规则,有望提高推理机的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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