Abstract:
Marking duplicate bugs from bug report data has the significance to reduce effort and costs of software development, maintenance and evolution. Prior work has used machin...Show MoreMetadata
Abstract:
Marking duplicate bugs from bug report data has the significance to reduce effort and costs of software development, maintenance and evolution. Prior work has used machine learning techniques to mark duplicate bugs but has employed incomplete knowledge which can be not very effective with the explosive growth in data volume and complexity. To redress this situation, in this paper we discover knowledge from bug report data that lead to high-quality services. Our work is the first to examine the depth of knowledge on quality. Our approach has been used in APACHE, ECLIPSE, and MOZILLA, including 1104,254 bug reports and 26 years of development time. The results show that our approach can obtain high accuracy in marking duplicate bugs.
Date of Conference: 04-06 September 2016
Date Added to IEEE Xplore: 10 November 2016
ISBN Information: