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Calculating the Usage Probabilities of Statistical Usage Models by Constraints Optimization

机译:通过约束优化计算统计使用模型的使用概率

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The systematic generation of test cases from statistical usage models has been investigated recently for specific application domains, such as wireless communications or automotive applications. For Markov chain usage models, the expected usage of a hardware/software system is represented by transitions between usage states and a usage profile, meaning probability values that are attached to the state transitions. In this paper, we explain how to calculate the profile probabilities for the Markov chain usage model from a set of linear usage constraints and by optimizing a convex polyhedron that represents the constrained solution space. Comparing the computed probability distributions of our polyhedron approach with the maximum entropy technique, which is the main technique used so far, illustrates that our results are more obvious to the intented constraint semantics. In order to demonstrate the applicability of our approach, workflow testing of a complex RIS/PACS system in the medical domain was carried through and has provided promising results.
机译:最近已经研究了统计使用模型的测试用例的系统生成,用于特定应用域,例如无线通信或汽车应用。对于Markov链使用模型,硬件/软件系统的预期使用由使用状态和使用配置文件之间的转换表示,这意味着附加到状态转换的概率值。在本文中,我们解释了如何计算来自一组线性使用约束的马尔可夫链使用模型的简概率概率,并通过优化表示受约束解空间的凸多面体。比较我们多面体方法的计算概率分布与最大熵技术,这是迄今为止所使用的主要技术,说明我们的结果对所需的约束语义更为明显。为了展示我们的方法的适用性,通过并提供了有希望的结果的复杂RIS / PACS系统的工作流程测试。

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