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首页> 外文期刊>The international arab journal of information technology >Incorporating Unsupervised Machine Learning Technique on Genetic Algorithm for Test Case Optimization
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Incorporating Unsupervised Machine Learning Technique on Genetic Algorithm for Test Case Optimization

机译:将无监督机器学习技术与遗传算法相结合来优化测试用例

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摘要

Search-based software testing uses random or directed search techniques to address problems. This paper discusses on test case selection and prioritization by combining genetic and clustering algorithms. Test cases have been generated using genetic algorithm and the prioritization is performed using group-wise clustering algorithm by assigning priorities to the generated test cases thereby reducing the size of a test suite. Test case selection is performed to select a suitable test case in order to their importance with respect to test goals. The objectives considered for criteria-based optimization are to optimize test suite with better condition coverage and to improve the fault detection capability and to minimize the execution time. Experimental results show that significant improvement when compared to the existing clustering technique in terms of condition coverage up to 93%, improved fault detection capability achieved upto 85.7% with minimal execution time of 4100ms.
机译:基于搜索的软件测试使用随机或定向搜索技术来解决问题。本文讨论了通过结合遗传算法和聚类算法来选择测试用例和确定优先级。已经使用遗传算法生成了测试用例,并通过将优先级分配给生成的测试用例,从而使用分组聚类算法来执行优先级排序,从而减小了测试套件的大小。执行测试用例选择以选择合适的测试用例,以使其对测试目标具有重要意义。基于标准的优化考虑的目标是优化具有更好条件覆盖范围的测试套件,并提高故障检测能力并最小化执行时间。实验结果表明,与现有的聚类技术相比,条件覆盖率高达93%的显着改善,故障检测能力提高了85.7%,执行时间最少为4100ms。

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