Synergizing Specification Miners through Model Fissions and Fusions (T)

Tien-Duy B. Le, X. Le, D. Lo, Ivan Beschastnikh
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引用次数: 47

Abstract

Software systems are often developed and released without formal specifications. For those systems that are formally specified, developers have to continuously maintain and update the specifications or have them fall out of date. To deal with the absence of formal specifications, researchers have proposed techniques to infer the missing specifications of an implementation in a variety of forms, such as finite state automaton (FSA). Despite the progress in this area, the efficacy of the proposed specification miners needs to improve if these miners are to be adopted. We propose SpecForge, a new specification mining approach that synergizes many existing specification miners. SpecForge decomposes FSAs that are inferred by existing miners into simple constraints, through a process we refer to as model fission. It then filters the outlier constraints and fuses the constraints back together into a single FSA (i.e., model fusion). We have evaluated SpecForge on execution traces of 10 programs, which includes 5 programs from DaCapo benchmark, to infer behavioral models of 13 library classes. Our results show that SpecForge achieves an average precision, recall and F-measure of 90.57%, 54.58%, and 64.21% respectively. SpecForge outperforms the best performing baseline by 13.75% in terms of F-measure.
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通过模型裂变和融合协同规范矿工(T)
软件系统的开发和发布通常没有正式的规格说明。对于那些正式指定的系统,开发人员必须不断地维护和更新规范,否则它们就会过时。为了解决缺乏正式规范的问题,研究人员提出了以各种形式推断实现的缺失规范的技术,例如有限状态自动机(FSA)。尽管在这一领域取得了进展,但如果要采用这些矿工,建议的规范矿工的有效性需要提高。我们提出SpecForge,这是一种新的规范挖掘方法,可以协同许多现有的规范挖掘器。SpecForge将现有矿工推断的fsa分解为简单的约束,我们将其称为模型裂变过程。然后,它过滤异常约束并将约束融合回单个FSA(即,模型融合)。我们在10个程序的执行轨迹上对SpecForge进行了评估,其中包括来自DaCapo基准测试的5个程序,以推断13个库类的行为模型。结果表明,SpecForge的平均精密度、召回率和F-measure分别为90.57%、54.58%和64.21%。就F-measure而言,SpecForge的性能比最佳基准高出13.75%。
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