SemirFL:结合语义信息和信息检索增强故障定位

Xiangyu Shi, Xiaolin Ju, Xiang Chen, Guilong Lu, Mengqi Xu
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引用次数: 0

摘要

自动化故障定位旨在减少软件开发演进过程中的软件维护工作量。应用从bug报告和源文件中提取的不同特性可以帮助定位故障。然而,这些方法在测量相似度特征时将编程语言视为自然的,只考虑精确的术语匹配而忽略深层语义相似度特征。此外,现有的缺陷定位方法需要利用从源文件中提取的结构信息,而程序语言与自然语言相比具有独特的结构特征。在本文中,我们提出了一个结合卷积神经网络(CNN)和修正向量空间模型(rVSM)的模型SemirFL,该模型具有4个元数据特征(bug修复近时性、bug修复频率、协同过滤得分和类名相似度)。SemirFL已经在四个开源项目中进行了研究。实验结果表明,SemirFL在错误源文件的故障定位方面明显优于现有的代表性技术。
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SemirFL: Boosting Fault Localization via Combining Semantic Information and Information Retrieval
Automated fault localization aims to reduce software maintenance's workload during software development's evolution. Applying different features extracted from bug reports and source files can help locate faults. However, these approaches consider programming languages as natural when measuring similarity features, considering only precise term matching and ignoring deep semantic similarity features. Furthermore, existing bug localization approaches need to utilize the structural information extracted from source files, where program languages have unique structural features compared to natural languages. In this paper, we proposed SemirFL, a model combining both Convolutional Neural Network(CNN) and revised Vector Space Model(rVSM), which is feeded with four metadata features (bug-fixing recency, bug-fixing frequency, collaborative filtering score, and class name similarity). SemirFL has been studied on four open-source projects. The experimental results show that SemirFL can significantly outperform the existing representative techniques in locating faults in the buggy source files.
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