International Journal of Science and Research (IJSR)

International Journal of Science and Research (IJSR)
www.ijsr.net | Most Trusted Research Journal Since Year 2012

ISSN: 2319-7064



Research Paper | Software Engineering | India | Volume 5 Issue 11, November 2016

Rank SVM Based Tracking and Mapping Bug Reports to Relevant Files

Dr. S. Preetha, N. Gangarajam

Once the bug occurred, it is a difficult process to localize the bug. It is taking the long time for placing the bug. So the tedious process of placing the bugs taking more time. Sometimes this time taken is more than fixing the bugs. A tool for ranking all the source files of a project with respect to how likely to contain the cause of the bug world enable developers to narrow down their search and potentially could lead to a substantial increase in productivity. Adaptive Rank SVM approach that leverages domain knowledge through functional decompositions of source code files into methods, API descriptions of library components used in the code, the bug-fixing history, and the code changes history. Given a bug report, the ranking score of each source file is computed as a weighted combination of an array of features encoding domain knowledge, where the weights are trained automatically on previously solved bug reports using Learning-to-rank Technique.

Keywords: Ranking Model, Filtering, Pairwise approach

Edition: Volume 5 Issue 11, November 2016

Pages: 914 - 921

Share this Article

How to Cite this Article?

Dr. S. Preetha, N. Gangarajam, "Rank SVM Based Tracking and Mapping Bug Reports to Relevant Files", International Journal of Science and Research (IJSR), https://www.ijsr.net/search_index_results_paperid.php?id=ART20162935, Volume 5 Issue 11, November 2016, 914 - 921

32 PDF Views | 40 PDF Downloads

Download Article PDF

Similar Articles with Keyword 'Filtering'

Research Paper, Software Engineering, India, Volume 5 Issue 11, November 2016

Pages: 914 - 921

Rank SVM Based Tracking and Mapping Bug Reports to Relevant Files

Dr. S. Preetha, N. Gangarajam

Share this Article

M.Tech / M.E / PhD Thesis, Software Engineering, India, Volume 4 Issue 3, March 2015

Pages: 1344 - 1346

Efficient Query Analyzer with Personalized Recommendations

Sini R, Lizmol Stephen

Share this Article



Top