Successive Refinement of Models for Model-Based Testing to Increase System Test Effectiveness

Ceren Sahin Gebizli, Hasan Sözer, A. Ercan
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引用次数: 8

Abstract

Model-based testing is used for automatically generating test cases based on models of the system under test. The effectiveness of tests depends on the contents of these models. Therefore, we introduce a novel three-step model refinement approach. We represent test models in the form of Markov chains. First, we update state transition probabilities in these models based on usage profile. Second, we perform an update based on fault likelihood that is estimated with static code analysis. Our third update is based on error likelihood that is estimated with dynamic analysis. We generate and execute test cases after each refinement. We applied our approach for model-based testing of a Smart TV system and new faults were revealed after each refinement.
基于模型的测试模型的连续细化以提高系统测试效率
基于模型的测试用于根据被测系统的模型自动生成测试用例。测试的有效性取决于这些模型的内容。因此,我们引入了一种新的三步模型改进方法。我们用马尔可夫链的形式表示测试模型。首先,我们根据使用情况更新这些模型中的状态转移概率。其次,我们根据静态代码分析估计的故障可能性执行更新。我们的第三个更新是基于动态分析估计的错误可能性。我们在每次细化之后生成并执行测试用例。我们将我们的方法应用于智能电视系统的基于模型的测试,每次改进后都会发现新的故障。
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