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A case study of the recursive least squares estimation approach to adaptive testing for software components

机译:软件组件自适应测试的递归最小二乘估计方法的案例研究

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The strategy used for testing a software system should not be fixed, because as time goes on we may have a better understanding of the software under test. A solution to this problem is to introduce control theory into software testing. We can use adaptive testing where the testing strategy is adjusted on-line by using the data collected during testing. Since the use of software components in software development is increasing, it is now more important than ever to adopt a good strategy for testing software components. In this paper, we use an adaptive testing strategy for testing software components. This strategy (AT/spl I.bar/RLSE/sub c/ with c indicating components) applies a recursive least squares estimation (RLSE) method to estimate parameters such as failure detection rate. It is different from the genetic algorithm-based adaptive testing (AT/spl I.bar/GA) where a genetic algorithm is used for parameter estimation. Experimental data from our case study suggest that the fault detection effectiveness of AT/spl I.bar/RLSE/sub c/ is better than that of AT/spl I.bar/GA and random testing.
机译:用于测试软件系统的策略不应固定,因为随着时间的推移,我们可能会更好地了解正在测试的软件。解决问题的解决方案是将控制理论引入软件测试。我们可以使用自适应测试,其中通过使用在测试期间收集的数据在线调整测试策略。由于在软件开发中使用软件组件,因此现在比以往任何时候都更加重要,以采用良好的测试软件组件。在本文中,我们使用自适应测试策略来测试软件组件。此策略(AT / SPL I.Bar/SE/SUB C / WITE C表示组件)应用递归最小二乘估计(RLSE)方法来估计诸如故障检测率的参数。它与基于遗传算法的自适应测试(AT / SPL I.Bar/GA)不同,其中遗传算法用于参数估计。来自我们的案例研究的实验数据表明AT / SPL I.Bar/SE / SUB C /的故障检测效果比AT / SPL I.BAR//GA和随机测试更好。

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