Fault localization in software testing using soft computing approaches

P. Singh, Sheely Garg, Mandeep Kaur, M. Bajwa, Y. Kumar
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引用次数: 5

Abstract

Testing is the most important and critical task in software development life cycle. Whenever software testing execution fails its test scripts is analyzed so that the point where fault occurred can be detected and the expected result can be achieved. Detecting fault in software is called as fault localization. Manually fault localization can be a cumbersome job so providing automated technique to do the same without human intervention is the demand from long time. In this paper, a brief overview of some important fault localization technique using soft computing techniques is carried out. Based on the identified points, it is identified that better result may be generated using machine learning technique along with time reduction. Prime objective of this paper is to made and attempt for identifying the fault localization techniques in combination with soft computing approaches to minimize the time and space complexities, so that the better results may be achieved in context of usability and effectiveness.
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基于软计算方法的软件测试故障定位
测试是软件开发生命周期中最重要、最关键的任务。每当软件测试执行失败时,就分析它的测试脚本,以便可以检测到发生故障的点,并实现预期的结果。在软件中检测故障称为故障定位。手动故障定位可能是一项繁琐的工作,因此提供自动化技术来完成相同的工作而无需人工干预是长期以来的需求。本文简要介绍了利用软计算技术进行故障定位的几种重要技术。基于识别的点,确定了使用机器学习技术在减少时间的同时可以产生更好的结果。本文的主要目的是提出并尝试结合软计算方法识别故障定位技术,以最大限度地减少时间和空间复杂性,从而在可用性和有效性的前提下获得更好的结果。
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