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Collective Personalized Change Classification With Multiobjective Search.

Authors :
Xia, Xin
Lo, David
Wang, Xinyu
Yang, Xiaohu
Source :
IEEE Transactions on Reliability. Dec2016, Vol. 65 Issue 4, p1810-1829. 20p.
Publication Year :
2016

Abstract

Many change classification techniques have been proposed to identify defect-prone changes. These techniques consider all developers’ historical change data to build a global prediction model. In practice, since developers have their own coding preferences and behavioral patterns, which causes different defect patterns, a separate change classification model for each developer can help to improve performance. Jiang, Tan, and Kim refer to this problem as personalized change classification, and they propose PCC+ to solve this problem. A software project has a number of developers; for a developer, building a prediction model not only based on his/her change data, but also on other relevant developers’ change data can further improve the performance of change classification. In this paper, we propose a more accurate technique named collective personalized change classification (CPCC), which leverages a multiobjective genetic algorithm. For a project, CPCC first builds a personalized prediction model for each developer based on his/her historical data. Next, for each developer, CPCC combines these models by assigning different weights to these models with the purpose of maximizing two objective functions (i.e., F1-scores and cost effectiveness). To further improve the prediction accuracy, we propose CPCC+ by combining CPCC with PCC proposed by Jiang, Tan, and Kim To evaluate the benefits of CPCC+ and CPCC, we perform experiments on six large software projects from different communities: Eclipse JDT, Jackrabbit, Linux kernel, Lucene, PostgreSQL, and Xorg. The experiment results show that CPCC+ can discover up to 245 more bugs than PCC+ (468 versus 223 for PostgreSQL) if developers inspect the top 20% lines of code that are predicted buggy. In addition, CPCC+ can achieve F1-scores of 0.60–0.75, which are statistically significantly higher than those of PCC+ on all of the six projects. [ABSTRACT FROM PUBLISHER]

Details

Language :
English
ISSN :
00189529
Volume :
65
Issue :
4
Database :
Academic Search Index
Journal :
IEEE Transactions on Reliability
Publication Type :
Academic Journal
Accession number :
119943115
Full Text :
https://doi.org/10.1109/TR.2016.2588139