将JUnit断言自动转换为英语的细粒度方法

Danielle Gonzalez, Suzanne Prentice, Mehdi Mirakhorli
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引用次数: 5

摘要

将源代码或单元测试代码转换为英语已被证明可以提高软件和测试的可维护性、可理解性和分析性。代码总结器识别源代码/测试中的“重要”语句,并使用静态分析和NLP技术将它们转换为易于理解的英语句子。然而,当前的测试总结方法只处理JUnit断言API(测试用例的关键组件)中允许的变化和定制的一个子集,这可能会影响转换的准确性。在本文中,我们通过将总共45个唯一的JUnit断言转换为英语的详细过程,介绍了我们为改进JUnit测试摘要所做的工作,其中包括assertThat方法以前未处理的37个变体。这个过程也已经作为AssertConvert工具实现和发布。最初的评估表明,该工具生成的英语转换可以准确地表示各种各样的断言语句,这些断言语句可用于代码摘要或其他NLP分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fine-grained approach for automated conversion of JUnit assertions to English
Converting source or unit test code to English has been shown to improve the maintainability, understandability, and analysis of software and tests. Code summarizers identify 'important' statements in the source/tests and convert them to easily understood English sentences using static analysis and NLP techniques. However, current test summarization approaches handle only a subset of the variation and customization allowed in the JUnit assert API (a critical component of test cases) which may affect the accuracy of conversions. In this paper, we present our work towards improving JUnit test summarization with a detailed process for converting a total of 45 unique JUnit assertions to English, including 37 previously-unhandled variations of the assertThat method. This process has also been implemented and released as the AssertConvert tool. Initial evaluations have shown that this tool generates English conversions that accurately represent a wide variety of assertion statements which could be used for code summarization or other NLP analyses.
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