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Identifying recurring association rules in software defect prediction

机译:在软件缺陷预测中识别重复关联规则

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Association rule mining discovers patterns of co-occurrences of attributes as association rules in a data set. The derived association rules are expected to be recurrent, that is, the patterns recur in future in other data sets. This paper defines the recurrence of a rule, and aims to find a criteria to distinguish between high recurrent rules and low recurrent ones using a data set for software defect prediction. An experiment with the Eclipse Mylyn defect data set showed that rules of lower than 30 transactions showed low recurrence. We also found that the lower bound of transactions to select high recurrence rules is dependent on the required precision of defect prediction.
机译:关联规则挖掘发现属性共现的模式作为数据集中的关联规则。派生的关联规则应该是周期性的,也就是说,模式将来会在其他数据集中重现。本文定义了规则的重复性,旨在通过使用用于软件缺陷预测的数据集来找到区分高重复性规则和低重复性规则的标准。使用Eclipse Mylyn缺陷数据集进行的实验表明,少于30个事务的规则显示较低的重复发生率。我们还发现,选择高重复性规则的事务的下限取决于缺陷预测所需的精度。

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