参与与代表:软件验证算法选择的新视角

Cedric Richter, H. Wehrheim
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引用次数: 7

摘要

今天,存在着大量不同的软件验证工具。当手头有具体的验证任务时,软件开发人员就面临算法选择的问题。现有的软件验证算法选择器通常使用精心挑选的程序特征以及(1)手动设计的选择启发式或(2)机器学习策略。虽然第一种方法无法转移到其他选择问题,但第二种方法缺乏可解释性,即对选择特定工具的原因的见解。本文提出了一种新的软件验证算法选择方法。我们的方法采用表征学习和注意机制。表示学习规避了特征工程,即避免了手工挑选程序特征。注意允许一种形式的可解释性的学习选择。我们已经实现了我们的方法,并对其进行了实验评估,并与现有方法进行了比较。评估结果表明,表征学习不仅优于人工特征工程,而且能够将学习模型转移到其他选择任务中。
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Attend and Represent: A Novel View on Algorithm Selection for Software Verification
Today, a plethora of different software verification tools exist. When having a concrete verification task at hand, software developers thus face the problem of algorithm selection. Existing algorithm selectors for software verification typically use handpicked program features together with (1) either manually designed selection heuristics or (2) machine learned strategies. While the first approach suffers from not being transferable to other selection problems, the second approach lacks interpretability, i.e., insights into reasons for choosing particular tools. In this paper, we propose a novel approach to algorithm selection for software verification. Our approach employs representation learning together with an attention mechanism. Representation learning circumvents feature engineering, i.e., avoids the handpicking of program features. Attention permits a form of interpretability of the learned selectors. We have implemented our approach and have experimentally evaluated and compared it with existing approaches. The evaluation shows that representation learning does not only outperform manual feature engineering, but also enables transferability of the learning model to other selection tasks.
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