用于统计测试的合成数据生成

Ghanem Soltana, M. Sabetzadeh, L. Briand
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引用次数: 34

摘要

基于使用情况的统计测试利用有关被测系统的实际或预期使用情况的知识来估计系统可靠性。对于许多系统,基于使用情况的统计测试包括生成合成测试数据。这些数据必须具有与系统在运行过程中处理的实际数据相同的统计特征。合成测试数据必须进一步满足实际数据所受的任何逻辑有效性约束。针对数据密集型系统,我们提出了一种生成综合测试数据的方法,该方法在统计上具有代表性,在逻辑上有效。该方法的工作原理是,首先生成满足所需统计特征的数据样本,而不考虑逻辑约束。随后,该方法调整生成的样例以修复任何违反逻辑约束的情况。调整过程是迭代的,并不断地指导实现所需的统计特性。我们报告了对该方法的实际评估,其中我们生成了用于测试公共管理IT系统的公民记录的合成人口。结果表明,我们的方法具有可扩展性,能够同时满足统计代表性和逻辑有效性要求。
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Synthetic data generation for statistical testing
Usage-based statistical testing employs knowledge about the actual or anticipated usage profile of the system under test for estimating system reliability. For many systems, usage-based statistical testing involves generating synthetic test data. Such data must possess the same statistical characteristics as the actual data that the system will process during operation. Synthetic test data must further satisfy any logical validity constraints that the actual data is subject to. Targeting data-intensive systems, we propose an approach for generating synthetic test data that is both statistically representative and logically valid. The approach works by first generating a data sample that meets the desired statistical characteristics, without taking into account the logical constraints. Subsequently, the approach tweaks the generated sample to fix any logical constraint violations. The tweaking process is iterative and continuously guided toward achieving the desired statistical characteristics. We report on a realistic evaluation of the approach, where we generate a synthetic population of citizens' records for testing a public administration IT system. Results suggest that our approach is scalable and capable of simultaneously fulfilling the statistical representativeness and logical validity requirements.
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