Skip to Main content Skip to Navigation
New interface
Journal articles

Towards Effective Bug Triage with Software Data Reduction Techniques

Abstract : Software companies spend over 45 percent of cost in dealing with software bugs. An inevitable step of fixing bugs is bug triage, which aims to correctly assign a developer to a new bug. To decrease the time cost in manual work, text classification techniques are applied to conduct automatic bug triage. In this paper, we address the problem of data reduction for bug triage, i.e., how to reduce the scale and improve the quality of bug data. We combine instance selection with feature selection to simultaneously reduce data scale on the bug dimension and the word dimension. To determine the order of applying instance selection and feature selection, we extract attributes from historical bug data sets and build a predictive model for a new bug data set. We empirically investigate the performance of data reduction on totally 600,000 bug reports of two large open source projects, namely Eclipse and Mozilla. The results show that our data reduction can effectively reduce the data scale and improve the accuracy of bug triage. Our work provides an approach to leveraging techniques on data processing to form reduced and high-quality bug data in software development and maintenance.
Document type :
Journal articles
Complete list of metadata
Contributor : Jifeng Xuan Connect in order to contact the contributor
Submitted on : Monday, July 7, 2014 - 9:59:01 AM
Last modification on : Friday, November 18, 2022 - 9:26:40 AM
Long-term archiving on: : Tuesday, October 7, 2014 - 10:56:28 AM


Files produced by the author(s)



Jifeng Xuan, He Jiang, Yan Hu, Zhilei Ren, Weiqin Zou, et al.. Towards Effective Bug Triage with Software Data Reduction Techniques. IEEE Transactions on Knowledge and Data Engineering, 2014, ⟨10.1109/TKDE.2014.2324590⟩. ⟨hal-01018934⟩



Record views


Files downloads