Have We Seen Enough Traces? (T)

Hila Cohen, S. Maoz
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引用次数: 12

Abstract

Dynamic specification mining extracts candidate specifications from logs of execution traces. Existing algorithms differ in the kinds of traces they take as input and in the kinds of candidate specification they present as output. One challenge common to all approaches relates to the faithfulness of the mining results: how can we be confident that the extracted specifications faithfully characterize the program we investigate? Since producing and analyzing traces is costly, how would we know we have seen enough traces? And, how would we know we have not wasted resources and seen too many of them?In this paper we address these important questions by presenting a novel, black box, probabilistic framework based on a notion of log completeness, and by applying it to three different well-known specification mining algorithms from the literature: k-Tails, Synoptic, and mining of scenario-based triggers and effects. Extensive evaluation over 24 models taken from 9 different sources shows the soundness, generalizability, and usefulness of the framework and its contribution to the state-of-the-art in dynamic specification mining.
我们发现了足够多的痕迹吗?(T)
动态规范挖掘从执行跟踪日志中提取候选规范。现有算法的不同之处在于它们作为输入的跟踪类型和它们作为输出呈现的候选规范类型。所有方法共同面临的一个挑战与挖掘结果的准确性有关:我们如何确信提取的规范忠实地描述了我们调查的程序?既然产生和分析痕迹是昂贵的,我们怎么知道我们已经看到了足够的痕迹呢?而且,我们怎么知道我们没有浪费资源,没有看到太多资源?在本文中,我们通过提出一个基于日志完整性概念的新颖的黑箱概率框架来解决这些重要问题,并将其应用于文献中三种不同的知名规范挖掘算法:k- tail, Synoptic和基于场景的触发器和效果的挖掘。对来自9个不同来源的24个模型进行了广泛的评估,显示了该框架的稳健性、通用性和实用性,以及它对动态规范挖掘的最新贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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