Reinforcement learning for mutation operator selection in automated program repair

IF 3.1 2区 计算机科学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Carol Hanna, Aymeric Blot, Justyna Petke
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引用次数: 0

Abstract

Automated program repair techniques aim to aid software developers with the challenging task of fixing bugs. In heuristic-based program repair, a search space of mutated program variants is explored to find potential patches for bugs. Most commonly, every selection of a mutation operator during search is performed uniformly at random, which can generate many buggy, even uncompilable programs. Our goal is to reduce the generation of variants that do not compile or break intended functionality which waste considerable resources. In this paper, we investigate the feasibility of a reinforcement learning-based approach for the selection of mutation operators in heuristic-based program repair. Our proposed approach is programming language, granularity-level, and search strategy agnostic and allows for easy augmentation into existing heuristic-based repair tools. We conducted an extensive empirical evaluation of four operator selection techniques, two reward types, two credit assignment strategies, two integration methods, and three sets of mutation operators using 30,080 independent repair attempts. We evaluated our approach on 353 real-world bugs from the Defects4J benchmark. The reinforcement learning-based mutation operator selection results in a higher number of test-passing variants, but does not exhibit a noticeable improvement in the number of bugs patched in comparison with the baseline, uniform random selection. While reinforcement learning has been previously shown to be successful in improving the search of evolutionary algorithms, often used in heuristic-based program repair, it has yet to demonstrate such improvements when applied to this area of research.

自动程序修复中突变算子选择的强化学习
自动程序修复技术旨在帮助软件开发人员完成修复错误的挑战性任务。在基于启发式的程序修复中,探索了一个突变程序变体的搜索空间,以找到潜在的漏洞补丁。最常见的是,在搜索过程中,每个突变操作符的选择都是均匀随机执行的,这可能产生许多错误,甚至不可编译的程序。我们的目标是减少不能编译或破坏预期功能的变体的生成,这会浪费大量资源。在本文中,我们研究了一种基于强化学习的方法在基于启发式的程序修复中选择突变算子的可行性。我们提出的方法是编程语言、粒度级和搜索策略不可知的,并且允许轻松地扩展到现有的基于启发式的修复工具中。我们利用30,080次独立修复尝试,对四种算子选择技术、两种奖励类型、两种信用分配策略、两种整合方法和三组突变算子进行了广泛的实证评估。我们对来自缺陷4j基准测试的353个实际错误评估了我们的方法。基于强化学习的突变操作符选择导致更多的通过测试的变体,但与基线一致的随机选择相比,在修补错误的数量上没有显着改善。虽然强化学习之前已经被证明在改进进化算法的搜索方面是成功的,通常用于基于启发式的程序修复,但当应用于这一研究领域时,它还没有证明这种改进。
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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来源期刊
Automated Software Engineering
Automated Software Engineering 工程技术-计算机:软件工程
CiteScore
4.80
自引率
11.80%
发文量
51
审稿时长
>12 weeks
期刊介绍: This journal details research, tutorial papers, survey and accounts of significant industrial experience in the foundations, techniques, tools and applications of automated software engineering technology. This includes the study of techniques for constructing, understanding, adapting, and modeling software artifacts and processes. Coverage in Automated Software Engineering examines both automatic systems and collaborative systems as well as computational models of human software engineering activities. In addition, it presents knowledge representations and artificial intelligence techniques applicable to automated software engineering, and formal techniques that support or provide theoretical foundations. The journal also includes reviews of books, software, conferences and workshops.
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