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Optimal Software Testing Case Research Based on Self-Learning Control Algorithm

机译:基于自学习控制算法的最优软件测试案例研究

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This paper demonstrates an approach to optimizing software testing cases by rapidly fixing software deficiency with given software parameter uncertainty during a regressive testing process. Taking the software testing process into a time-varied system control problem, a state transform matrix model is presented. Because regressive testing is an iterative process, the two-dimensional variable-factor self-learning strategy is used to optimize the test case. The simulation results show that the learning control strategy is better than either random testing or the Markov testing strategy, and it can significantly reduce regressive test numbers and save test costs.
机译:本文演示了一种通过在回归测试过程中快速修复软件缺陷的软件缺陷来优化软件测试用例的方法。将软件测试过程置于时间变化的系统控制问题中,提出了一个状态变换矩阵模型。因为回归测试是一个迭代过程,所以使用二维可变因子自学习策略来优化测试用例。仿真结果表明,学习控制策略比随机测试还是马尔可夫测试策略,可以显着减少回归测试号并节省测试成本。

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