International Conference
inproceedings
Yet Another Metric For Predicting Fault-Prone Modules
  • December 2009
  • Proc. of 2009 International Conference on Advanced Software Engineering & Its Applications (ASEA2009) / CCIS 59 / pp. 296-304 /
  • Cheju, Korea
Abstract

Recently, machine learning approaches have been widely used for fault-proneness detection. Introduction of machine learning approaches induces development of new software metrics for fault-prone module detection. We have proposed an approach to detect fault-prone modules using the spam-filtering technique. To treat our approach as the conventional fault-prone approaches, we summarize the output of spam-filtering based approach as a metric. In this paper, we show the effectiveness of our new metric comparing the conventional software metrics.
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