Improving automatic bug assignment using time-metadata in term-weighting

Document Type

Article

Publication Date

1-1-2014

Abstract

Assigning newly reported bugs to project developers is a time-consuming and tedious task for triagers using the traditional manual bug triage process. Previous efforts for creating automatic bug assignment systems use machine learning and information-retrieval techniques. These approaches commonly use tf-idf, a statistical computation technique for weighting terms based on term frequency. However, tf-idf does not consider the metadata, such as the time frame at which a term was used, when calculating the weight of the terms. This study proposes an alternate term-weighting technique to improve the accuracy of automatic bug assignment approaches that use a term-weighting technique. This technique includes the use of metadata in addition to the statistical computation to calculate the term weights. Moreover, it restricts the set of terms used to only nouns. It was found that when using only nouns and the proposed term-weighting technique, the accuracy of an automatic bug assignment approach improves from 12 to 49% over tf-idf for three open-source projects.

Keywords

Program debugging, statistical analysis, meta data, information retrieval, learning (artificial intelligence), software fault tolerance, automatic bug assignment improvement, time-metadata technique, term-weighting technique, manual bug triage process, machine learning technique, information-retrieval technique, statistical computation technique, term frequency

Publication Title

IETsoftware

Volume

8

Issue

6

Publisher

The Institution of Engineering and Technology

Publisher Location

MICHAEL FARADAY HOUSE SIX HILLS WAY STEVENAGE, HERTFORD SG1 2AY, ENGLAND

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