BUGMINER: Software Reliability Analysis Via Data Mining of Bug Reports
Wu
Leon Li
author
Columbia University. Computer Science
Columbia University. Center for Computational Learning Systems
Xie
Boyi
author
Columbia University. Computer Science
Kaiser
Gail E.
author
Columbia University. Computer Science
Passonneau
Rebecca
author
Columbia University. Computer Science
Columbia University. Computer Science
originator
contributor
text
Technical reports
New York
Department of Computer Science, Columbia University
2011
Software bugs reported by human users and automatic error reporting software are often stored in some bug tracking tools (e.g., Bugzilla and Debbugs). These accumulated bug reports may contain valuable information that could be used to improve the quality of the bug reporting, reduce the quality assurance effort and cost, analyze software reliability, and predict future bug report trend. In this paper, we present BUGMINER, a tool that is able to derive useful information from historic bug report database using data mining, use these information to do completion check and redundancy check on a new or given bug report, and to estimate the bug report trend using statistical analysis. Our empirical studies of the tool using several real-world bug report repositories show that it is effective, easy to implement, and has relatively high accuracy despite low quality data.
Computer science
Columbia University Computer Science Technical Reports
CUCS-024-11
http://hdl.handle.net/10022/AC:P:13132
English
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2012-05-03 16:25:02 -0400
2012-05-03 16:31:47 -0400
7135
eng