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<scp>Katana</scp> : Dual Slicing Based Context for Learning Bug Fixes

Mifta Sintaha, Noor Nashid, Ali Mesbah

2023ACM Transactions on Software Engineering and Methodology19 citationsDOI

Abstract

Contextual information plays a vital role for software developers when understanding and fixing a bug. Consequently, deep learning based program repair techniques leverage context for bug fixes. However, existing techniques treat context in an arbitrary manner, by extracting code in close proximity of the buggy statement within the enclosing file, class, or method, without any analysis to find actual relations with the bug. To reduce noise, they use a predefined maximum limit on the number of tokens to be used as context. We present a program slicing based approach, in which instead of arbitrarily including code as context, we analyze statements that have a control or data dependency on the buggy statement. We propose a novel concept called dual slicing , which leverages the context of both buggy and fixed versions of the code to capture relevant repair ingredients. We present our technique and tool called Katana , the first to apply slicing-based context for a program repair task. The results show that Katana effectively preserves sufficient information for a model to choose contextual information while reducing noise. We compare against four recent state-of-the-art context-aware program repair techniques. Our results show that Katana fixes between 1.5 and 3.7 times more bugs than existing techniques.

Topics & Concepts

Computer scienceProgram slicingDebuggingLeverage (statistics)SlicingContext (archaeology)Program comprehensionSoftwareStatement (logic)Software engineeringProgramming languageArtificial intelligenceSoftware systemWorld Wide WebPolitical sciencePaleontologyBiologyLawSoftware Testing and Debugging TechniquesSoftware Engineering ResearchSoftware Reliability and Analysis Research
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