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A new data structure for sat-based static learning with impact on test generation

机译:一种新的数据结构,用于基于坐姿的静态学习,对测试生成产生影响

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In this paper we analyze learning techniques based on the Boolean satisfiability method and find that static indirect A-implications and the super gate extraction approach are useful for increasing the precision of low complexity learning procedures. We propose a new data structure for the complete implication graph that allows efficient processing of the static indirect A-implications. We show that by deriving and performing the static indirect A-implications, some hard-to-detect static indirect implications can be easily found during static learning. In addition, the static indirect A-implications can be used to perform (without spare operations) some dynamic indirect implications during branch and bound search and dynamic learning. In this way, the new data structure of the complete implication graph increases efficiency and precision of both static and dynamic learning as well as branch and bound search. We utilize this data structure in development of an implicit static learning procedure. Experimental results for static learning and redundancy identification confirm their efficiency and precision. Further experimental work shows a positive impact of low complexity static learning on the efficiency and robustness of even combinatorial test generation. We expect that the contribution of the new data structure will be more visible when the super gate extraction approach is also implemented.
机译:在本文中,我们分析了基于布尔可满足性方法的学习技术,并发现静态间接A蕴涵和超级门提取方法对于提高低复杂度学习过程的精度很有用。我们为完整的蕴涵图提出了一种新的数据结构,该结构允许有效处理静态间接A蕴涵。我们表明,通过推导和执行静态间接A蕴涵,可以在静态学习过程中轻松找到一些难以检测的静态间接蕴涵。此外,静态间接A蕴涵可用于在分支定界搜索和动态学习过程中执行(无备用操作)一些动态间接隐含。这样,完整蕴涵图的新数据结构提高了静态和动态学习以及分支和边界搜索的效率和精度。我们在隐式静态学习过程的开发中利用了这种数据结构。静态学习和冗余识别的实验结果证实了它们的效率和精度。进一步的实验工作表明,低复杂度静态学习对甚至组合测试生成的效率和鲁棒性也有积极影响。我们预计,当实施超级门提取方法时,新数据结构的贡献将更加明显。

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