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引用次数: 23

摘要

由于两个原因,测试随机优化算法提出了一个独特的挑战。首先,这些算法是不可测试的程序,也就是说,如果测试oracle是已知的,那么一开始就不需要这些算法。其次,它们的性能取决于它们用来解决的问题实例。本文将统计变质检验方法应用于随机优化算法,研究了不同问题实例对随机优化算法的影响。本文以下一次发布问题(NRP)为例,对该方法进行了实证评估。利用突变试验对检测方法的有效性进行了评价。结果表明,尽管优化算法的随机性带来了挑战,但变形测试可以有效地测试它们。
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Metamorphic Testing of Stochastic Optimisation
Testing stochastic optimisation algorithms presents an unique challenge because of two reasons. First, these algorithms are non-testable programs, i.e. if the test oracle was known, there wouldn't have been the need for those algorithms in the first place. Second, their performance can vary depending on the problem instances they are used to solve. This paper applies the statistical metamorphic testing approach to stochastic optimisation algorithms and investigates the impact that different problem instances have on testing optimisation algorithms. The paper presents an empirical evaluation of the approach using instances of Next Release Problem (NRP). The effectiveness of the testing method is evaluated using mutation testing. The result shows that, despite the challenges from the stochastic nature of the optimisation algorithm, metamorphic testing can be effective in testing them.
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