时间k尾:时间自动机的自动推理

F. Pastore, D. Micucci, L. Mariani
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引用次数: 27

摘要

在实践中,描述软件系统行为的准确和最新的模型很少可用。为了解决这个问题,软件工程师可能会使用规范挖掘技术,它可以自动地派生出模型,这些模型可以捕获正在分析的系统的行为。到目前为止,大多数规范挖掘技术关注系统的功能行为,特别强调表示操作顺序的模型,例如时间规则和有限状态模型。尽管这些模型很有用,但它们本质上是片面的。例如,它们忽略了计时行为,而计时行为对于许多系统和组件类(例如共享库和用户驱动的应用程序)是极其相关的。挖掘既包括功能方面又包括时间方面的规范可以提高许多测试和分析解决方案的适用性。本文通过提出时序k尾(TkT)规范挖掘技术来解决这一挑战,该技术可以从程序跟踪中挖掘时序自动机。由于时间自动机可以有效地表示系统的功能行为和定时行为之间的相互作用,因此可以在与时间相关的信息相关的上下文中利用TkT。我们的实证评估表明,TkT可以高效有效地挖掘准确的模型。挖掘的模型已用于识别具有异常时间的执行。评估表明,大多数异常执行都被正确识别,而产生的误报很少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Timed k-Tail: Automatic Inference of Timed Automata
Accurate and up-to-date models describing the behavior of software systems are seldom available in practice. To address this issue, software engineers may use specification mining techniques, which can automatically derive models that capture the behavior of the system under analysis. So far, most specification mining techniques focused on the functional behavior of the systems, with specific emphasis on models that represent the ordering of operations, such as temporal rules and finite state models. Although useful, these models are inherently partial. For instance, they miss the timing behavior, which is extremely relevant for many classes of systems and components, such as shared libraries and user-driven applications. Mining specifications that include both the functional and the timing aspects can improve the applicability of many testing and analysis solutions. This paper addresses this challenge by presenting the Timed k-Tail (TkT) specification mining technique that can mine timed automata from program traces. Since timed automata can effectively represent the interplay between the functional and the timing behavior of a system, TkT could be exploited in those contexts where time-related information is relevant. Our empirical evaluation shows that TkT can efficiently and effectively mine accurate models. The mined models have been used to identify executions with anomalous timing. The evaluation shows that most of the anomalous executions have been correctly identified while producing few false positives.
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