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Abstractions and Pattern Databases: The Quest for Succinctness and Accuracy

机译:抽象和模式数据库:简洁性和准确性的追求

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Directed model checking is a well-established technique for detecting error states in concurrent systems efficiently. As error traces are important for debugging purposes, it is preferable to find as short error traces as possible. A wide spread method to find provably shortest error traces is to apply the A* search algorithm with distance heuristics that never overestimate the real error distance. An important class of such distance estimators is the class of pattern database heuristics, which are built on abstractions of the system under consideration. In this paper, we propose a systematic approach for the construction of pattern database heuristics. We formally define a concept to measure the accuracy of abstractions. Based on this technique, we address the challenge of finding abstractions that are succinct on the one hand, and accurate to produce informed pattern databases on the other hand. We evaluate our approach on large and complex industrial problems. The experiments show that the resulting distance heuristic impressively advances the state of the art.
机译:定向模型检查是一种行之有效的技术,可以有效地检测并发系统中的错误状态。由于错误跟踪对于调试目的很重要,因此最好找到尽可能短的错误跟踪。查找可证明的最短错误迹线的广泛方法是将A *搜索算法应用于距离启发法,而永远不会高估实际错误距离。这种距离估计器的重要类别是模式数据库启发式的类别,其建立在所考虑系统的抽象之上。在本文中,我们提出了一种用于模式数据库启发式方法构建的系统方法。我们正式定义一个概念来衡量抽象的准确性。基于这种技术,我们一方面解决了寻找简洁的抽象问题,另一方面又要准确地生成信息丰富的模式数据库的挑战。我们对大型和复杂的工业问题进行评估。实验表明,由此产生的距离启发式技术令人印象深刻地提高了现有技术水平。

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