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Experimental Study on GA-Based Path-Oriented Test Data Generation Using Branch Distance Function

机译:基于分支距离函数的基于遗传算法的路径测试数据实验研究

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Automatic path-oriented test data generation is not only a key problem but a hot issue in the research area of software testing today. Genetic algorithm (GA) has been used to path-oriented test data generation since 1992 and outperforms other approaches. A fitness function based on branch distance (BDBFF) has been applied in GA-based path-oriented test data generation. To investigate performance of this method, a triangle classification program was chosen as the benchmark. Using binary string coding, four combinations of selection and crossover operations were used to study performance of this method. Furthermore, the relationship between size of search space and average number of test data or average time was analyzed.
机译:面向路径的自动测试数据生成不仅是当今软件测试研究领域中的一个关键问题,而且还是一个热点问题。自1992年以来,遗传算法(GA)已用于面向路径的测试数据生成,并且性能优于其他方法。基于分支距离的适应度函数(BDBFF)已应用于基于GA的面向路径的测试数据生成。为了研究此方法的性能,选择了三角形分类程序作为基准。使用二进制字符串编码,选择和交叉操作的四种组合用于研究此方法的性能。此外,分析了搜索空间的大小与测试数据的平均数量或平均时间之间的关系。

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