Duplicate Bug Report Detection: How Far Are We?

Author:

Zhang Ting1,Han DongGyun2,Vinayakarao Venkatesh3,Irsan Ivana Clairine1,Xu Bowen1,Thung Ferdian1,Lo David1,Jiang Lingxiao1

Affiliation:

1. Singapore Management University, Singapore

2. Royal Holloway, University of London, United Kingdom

3. Chennai Mathematical Institute, India

Abstract

Many Duplicate Bug Report Detection (DBRD) techniques have been proposed in the research literature. The industry uses some other techniques. Unfortunately, there is insufficient comparison among them, and it is unclear how far we have been. This work fills this gap by comparing the aforementioned techniques. To compare them, we first need a benchmark that can estimate how a tool would perform if applied in a realistic setting today. Thus, we first investigated potential biases that affect the fair comparison of the accuracy of DBRD techniques. Our experiments suggest that data age and issue tracking system choice cause a significant difference. Based on these findings, we prepared a new benchmark. We then used it to evaluate DBRD techniques to estimate better how far we have been. Surprisingly, a simpler technique outperforms recently proposed sophisticated techniques on most projects in our benchmark. In addition, we compared the DBRD techniques proposed in research with those used in Mozilla and VSCode . Surprisingly, we observe that a simple technique already adopted in practice can achieve comparable results as a recently proposed research tool. Our study gives reflections on the current state of DBRD, and we share our insights to benefit future DBRD research.

Publisher

Association for Computing Machinery (ACM)

Subject

Software

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