English

CCTEST: Testing and Repairing Code Completion Systems

Software Engineering 2023-05-09 v3

Abstract

Code completion, a highly valuable topic in the software development domain, has been increasingly promoted for use by recent advances in large language models (LLMs). To date, visible LLM-based code completion frameworks such as GitHub Copilot and GPT are trained using deep learning over vast quantities of unstructured text and open source code. As the paramount component and the cornerstone in daily programming tasks, code completion has largely boosted professionals' efficiency in building real-world software systems. In contrast to this flourishing market, we find that code completion systems often output suspicious results, and to date, an automated testing and enhancement framework for code completion systems is not available. This research proposes CCTEST, a framework to test and repair code completion systems in blackbox settings. CCTEST features a set of novel mutation strategies, namely program structure-correlated (PSC) mutations, to generate mutated code completion inputs. Then, it detects inconsistent outputs, representing possibly erroneous cases, from all the completed code cases. Moreover, CCTEST repairs the code completion outputs by selecting the output that mostly reflects the "average" appearance of all output cases, as the final output of the code completion systems. We detected a total of 33,540 inputs (with a true positive rate of 86%) that can trigger erroneous cases from eight popular LLM-based code completion systems. With repairing, we show that the accuracy of code completion systems is notably increased by 40% and 67% with respect to BLEU score and Levenshtein edit similarity.

Keywords

Cite

@article{arxiv.2208.08289,
  title  = {CCTEST: Testing and Repairing Code Completion Systems},
  author = {Zongjie Li and Chaozheng Wang and Zhibo Liu and Haoxuan Wang and Dong Chen and Shuai Wang and Cuiyun Gao},
  journal= {arXiv preprint arXiv:2208.08289},
  year   = {2023}
}

Comments

13 pages, 10 figures, 5 tables. Accepted by ICSE 2023

R2 v1 2026-06-25T01:46:03.143Z