使用关联规则技术学习不变量

M. A. Souaiaia, T. Benouhiba
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引用次数: 0

摘要

动态不变性检测是通过分析执行轨迹来识别程序的属性。传统的动态不变量检测器,如Daikon,使用基于预定义不变量形式验证的朴素技术。不幸的是,这可能会放弃许多有用的知识,如变量之间的关系。这种知识有助于理解程序中隐藏的依赖关系。在本文中,我们提出将不变量检测建模为一个机器学习过程。我们打算使用学习算法来找出变量之间的相关性。我们对关联规则特别感兴趣,因为它们适合检测这种关系。我们提出了一种适应现有的学习技术以及一些修剪算法,以改进得到的不变量。与传统的Daikon工具相比,我们的方法成功地推断了许多关于变量关系的有意义的不变量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning invariants using association rules technique
Dynamic invariant detection is the identification of properties of programs by analyzing execution traces. Traditional dynamic invariant detectors, such as Daikon, use naive techniques based on verification of predefined invariant forms. Unfortunately, this may discard many useful knowledge such as relationship between variables. This kind of knowledge can be helpful to understand hidden dependencies in the program. In this paper, we propose to model invariant detection as a machine learning process. We intend to use learning algorithms to find out correlation between variables. We are particularly interested by association rules since they are suitable to detect such relationship. We propose an adaptation to existing learning techniques as well as some pruning algorithms in order to refine the obtained invariants. Compared to the traditional Daikon tool, our approach has successfully inferred many meaningful invariants about variables relationship.
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