首页> 外文会议>Fourth IEEE International Conference on Software Testing, Verification, and Validation >Using semi-supervised clustering to improve regression test selection techniques
【24h】

Using semi-supervised clustering to improve regression test selection techniques

机译:使用半监督聚类改进回归测试选择技术

获取原文
获取外文期刊封面目录资料

摘要

Cluster test selection is proposed as an efficient regression testing approach. It uses some distance measures and clustering algorithms to group tests into some clusters. Tests in a same cluster are considered to have similar behaviors. A certain sampling strategy for the clustering result is used to build up a small subset of tests, which is expected to approximate the fault detection capability of the original test set. All existing cluster test selection methods employ unsupervised clustering. The previous test results are not used in the process of clustering. It may lead to unsatisfactory clustering results in some cases. In this paper, a semi-supervised clustering method, namely semi-supervised K-means (SSKM), is introduced to improve cluster test selection. SSKM uses limited supervision in the form of pair wise constraints: Must-link and Cannot-link. These pair wise constraints are derived from previous test results to improve clustering results as well as test selection results. The experiment results illustrate the effectiveness of cluster test selection methods with SSKM. Two useful observations are made by analysis. (1) Cluster test selection with SSKM has a better effectiveness when the failed tests are in a medium proportion. (2) A strict definition of pair wise constraint can improve the effectiveness of cluster test selection with SSKM.
机译:提出将聚类测试选择作为一种有效的回归测试方法。它使用一些距离度量和聚类算法将测试分组为一些聚类。同一集群中的测试被认为具有相似的行为。使用某种针对聚类结果的采样策略来构建一小部分测试,该测试子集可以近似于原始测试集的故障检测能力。所有现有的群集测试选择方法都采用无监督的群集。群集过程中未使用之前的测试结果。在某些情况下,这可能导致无法令人满意的聚类结果。本文介绍了一种半监督聚类方法,即半监督K均值(SSKM),以改善聚类测试的选择。 SSKM使用成对约束形式的受限监管:必须链接和不能链接。这些成对约束来自先前的测试结果,以改善聚类结果以及测试选择结果。实验结果证明了采用SSKM进行聚类测试选择方法的有效性。通过分析得出两个有用的观察结果。 (1)当失败测试的比例中等时,使用SSKM进行集群测试选择会具有更好的效果。 (2)严格定义成对约束可以提高使用SSKM进行聚类测试选择的有效性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号