黑盒函数的属性驱动测试

Arnab Sharma, Vitali M. Melnikov, E. Hüllermeier, H. Wehrheim
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引用次数: 3

摘要

测试是软件质量保证最常用的手段之一。基于属性的测试旨在生成测试套件,用于根据用户定义的属性检查代码。然而,测试输入生成通常独立于要检查的属性,而是基于随机或用户定义的数据生成。在本文中,我们提出了具有数值输入和输出的函数的属性驱动单元测试。与基于属性的测试类似,它允许用户定义要测试的属性。与基于属性的测试相反,它还将属性用于测试输入的目标生成。我们的方法是一种基于学习的测试形式,我们首先使用标准机器学习算法学习给定黑箱函数的模型,然后在第二步中使用模型和属性来生成测试输入。这允许我们测试预定义的函数以及机器学习的回归模型。我们的实验评估表明,我们的属性驱动方法比标准的基于属性的测试技术更有效。
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Property-Driven Testing of Black-Box Functions
Testing is one of the most frequent means of quality assurance for software. Property-based testing aims at generating test suites for checking code against user-defined properties. Test input generation is, however, most often independent of the property to be checked, and is instead based on random or user-defined data generation.In this paper, we present property-driven unit testing of functions with numerical inputs and outputs. Alike property-based testing, it allows users to define the properties to be tested for. Contrary to property-based testing, it also uses the property for a targeted generation of test inputs. Our approach is a form of learning-based testing where we first of all learn a model of a given black-box function using standard machine learning algorithms, and in a second step use model and property for test input generation. This allows us to test both predefined functions as well as machine learned regression models. Our experimental evaluation shows that our property-driven approach is more effective than standard property-based testing techniques.
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