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TransRepair: Context-aware Program Repair for Compilation Errors

Authors :
Li, Xueyang
Liu, Shangqing
Feng, Ruitao
Meng, Guozhu
Xie, Xiaofei
Chen, Kai
Liu, Yang
Publication Year :
2022

Abstract

Automatically fixing compilation errors can greatly raise the productivity of software development, by guiding the novice or AI programmers to write and debug code. Recently, learning-based program repair has gained extensive attention and became the state-of-the-art in practice. But it still leaves plenty of space for improvement. In this paper, we propose an end-to-end solution TransRepair to locate the error lines and create the correct substitute for a C program simultaneously. Superior to the counterpart, our approach takes into account the context of erroneous code and diagnostic compilation feedback. Then we devise a Transformer-based neural network to learn the ways of repair from the erroneous code as well as its context and the diagnostic feedback. To increase the effectiveness of TransRepair, we summarize 5 types and 74 fine-grained sub-types of compilations errors from two real-world program datasets and the Internet. Then a program corruption technique is developed to synthesize a large dataset with 1,821,275 erroneous C programs. Through the extensive experiments, we demonstrate that TransRepair outperforms the state-of-the-art in both single repair accuracy and full repair accuracy. Further analysis sheds light on the strengths and weaknesses in the contemporary solutions for future improvement.<br />Comment: 11 pages, accepted to ASE '22

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2210.03986
Document Type :
Working Paper