Toward More Efficient Statistical Debugging with Abstraction Refinement

Author:

Zuo Zhiqiang1ORCID,Niu Xintao1ORCID,Zhang Siyi1ORCID,Fang Lu2ORCID,Khoo Siau Cheng3ORCID,Lu Shan4ORCID,Sun Chengnian5ORCID,Xu Guoqing Harry6ORCID

Affiliation:

1. State Key Laboratory for Novel Software Technology at Nanjing University, China

2. University of California, Irvine, USA

3. National University of Singapore, Singapore

4. University of Chicago, USA

5. University of Waterloo, Canada

6. UCLA, USA

Abstract

Debugging is known to be a notoriously painstaking and time-consuming task. As one major family of automated debugging, statistical debugging approaches have been well investigated over the past decade, which collect failing and passing executions and apply statistical techniques to identify discriminative elements as potential bug causes. Most of the existing approaches instrument the entire program to produce execution profiles for debugging, thus incurring hefty instrumentation and analysis cost. However, as in fact a major part of the program code is error-free, full-scale program instrumentation is wasteful and unnecessary. This article presents a systematic abstraction refinement-based pruning technique for statistical debugging. Our technique only needs to instrument and analyze the code partially. While guided by a mathematically rigorous analysis, our technique is guaranteed to produce the same debugging results as an exhaustive analysis in deterministic settings. With the help of the effective and safe pruning, our technique greatly saves the cost of failure diagnosis without sacrificing any debugging capability. We apply this technique to two different statistical debugging scenarios: in-house and production-run statistical debugging. The comprehensive evaluations validate that our technique can significantly improve the efficiency of statistical debugging in both scenarios, while without jeopardizing the debugging capability.

Funder

National Natural Science Foundation of China

Natural Science Foundation of Jiangsu Province

US National Science Foundation

US Office of Naval Research

Publisher

Association for Computing Machinery (ACM)

Subject

Software

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