Regression Test Suite Study Using Classic Statistical Methods and Machine Learning

Abhinandan H. Patil, Sangeeta A. Patil
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Abstract

This work is interdisciplinary in nature. This work tries to apply latest discoveries in Artificial Intel-ligence to classic testing methodologies. Machine Learning which is the field of Artificial Intelligence is explored in this work. The work demonstrates that provided the test team maintains the required data, Machine Learning Algorithms can aid in deciphering patterns from the test data. Patterns of interest are the relation between testers experience in the project and bugs uncovered, relations between the testers experience and the efficiency of test case with respect to code coverage and test execution time. Relation between testers experience and efficiency of test case with respect to code coverage and execution time, relation between testers experience and bugs uncovered are explored using classic statistical techniques and clustering Machine Learning Algorithms. This clustering can be of immense help in test selection, prioritization, pruning and Regression test execution time reduction.
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使用经典统计方法和机器学习进行回归测试套件研究
这项工作具有跨学科性质。这项工作试图将人工智能领域的最新发现应用到经典测试方法中。机器学习是人工智能的一个领域,本作品对机器学习进行了探索。这项工作表明,只要测试团队维护所需的数据,机器学习算法就能帮助从测试数据中解读模式。值得关注的模式包括测试人员在项目中的经验与发现的错误之间的关系,测试人员的经验与测试用例在代码覆盖率和测试执行时间方面的效率之间的关系。测试人员经验与测试用例效率(代码覆盖率和执行时间)之间的关系,以及测试人员经验与未发现的错误之间的关系,都是通过经典统计技术和聚类机器学习算法来探索的。这种聚类在测试选择、优先级排序、剪枝和减少回归测试执行时间方面有很大帮助。
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