使用多目标方法从可执行模型生成可行的测试路径

T. Yano, E. Martins, F. Sousa
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引用次数: 28

摘要

使用元启发式的基于搜索的测试技术,如进化算法,已经被大量用于测试数据生成,但是大多数方法是为白盒测试提出的。本文提出了一种从行为模型,特别是扩展有限状态机,生成测试序列的进化方法。一个开放的问题是产生不可行的路径,因为这些路径应该手工检测和丢弃。为了避免这个问题,我们使用一个可执行模型来动态地获得可行路径。进化算法用于搜索覆盖给定测试目的的解决方案,这是一个感兴趣的转换。目标转换被用作获得切片信息的标准,以这种方式,帮助识别影响测试目的的模型部分。我们还提出了一个多目标搜索:测试目的覆盖和序列大小最小化,因为更长的序列需要更多的努力来执行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generating Feasible Test Paths from an Executable Model Using a Multi-objective Approach
Search-based testing techniques using meta-heuristics, like evolutionary algorithms, has been largely used for test data generation, but most approaches were proposed for white-box testing. In this paper we present an evolutionary approach for test sequence generation from a behavior model, in particular, Extended Finite State Machine. An open problem is the production of infeasible paths, as these should be detected and discarded manually. To circumvent this problem, we use an executable model to obtain feasible paths dynamically. An evolutionary algorithm is used to search for solutions that cover a given test purpose, which is a transition of interest. The target transition is used as a criterion to get slicing information, in this way, helping to identify the parts of the model that affect the test purpose. We also present a multi-objective search: the test purpose coverage and the sequence size minimization, as longer sequences require more effort to be executed.
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