Using Machine Learning to Refine Black-Box Test Specifications and Test Suites

L. Briand, Y. Labiche, Z. Bawar
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引用次数: 35

Abstract

In the context of open source development or software evolution, developers often face test suites which have been developed with no apparent rationale and which may need to be augmented or refined to ensure sufficient dependability, or even reduced to meet tight deadlines. We refer to this process as the re-engineering of test suites. It is important to provide both methodological and tool support to help people understand the limitations of test suites and their possible redundancies, so as to be able to refine them in a cost effective manner. To address this problem in the case of black-box testing, we propose a methodology based on machine learning that has shown promising results on a case study.
使用机器学习优化黑盒测试规范和测试套件
在开放源码开发或软件进化的环境中,开发人员经常面对没有明显的基本原理的测试套件,这些测试套件可能需要增加或改进以确保足够的可靠性,甚至需要减少以满足紧迫的最后期限。我们把这个过程称为测试套件的再工程。提供方法和工具支持来帮助人们理解测试套件的局限性及其可能的冗余是很重要的,以便能够以一种成本有效的方式改进它们。为了在黑盒测试的情况下解决这个问题,我们提出了一种基于机器学习的方法,该方法在案例研究中显示出有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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