并行故障定位中距离度量的故障集中聚类性能评价:全知视角

Yihao Li, Pan Liu, Xiao Zhao, Jiaqi Yan, Xiaoyu Song
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引用次数: 1

摘要

为了同时定位多个错误,一种常见的做法是生成以错误为中心的集群,其中可能由相同错误引起的失败测试用例被分组在一起。关于以故障为中心的聚类性能,一个关键的影响因素是用于度量两个排名之间相似性的距离度量。本文提出了一种从全知的角度评估距离度量的故障集中聚类性能的方法,该方法已经给出了每个失败测试用例的故障集中信息。利用所提出的方法对三个多bug程序的Jaccard和Kendall tau距离进行了实例研究。这些发现似乎挑战了之前关于这两个距离度量在生成故障集中集群中的性能的看法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating the Fault-Focused Clustering Performance of Distance Metrics in Parallel Fault Localization: From an Omniscient Perspective
To locate multiple bugs in parallel, one common practice is to generate fault-focused clusters where failed test cases that are likely caused by the same bug are grouped together. With respect to the fault-focused clustering performance, a critical impact factor is the distance metric used to measure the similarity between two rankings. This paper proposes a method to evaluate the fault-focused clustering performance of distance metrics from an omniscient perspective where the fault-focused information for each failed test case is already given. Case studies are conducted using the proposed method to evaluate Jaccard and Kendall tau distance on three programs with multiple bugs. The findings seem to challenge previous perceptions regarding the performance of these two distance metrics in generating fault-focused clusters.
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