CodeGen-Test: An Automatic Code Generation Model Integrating Program Test Information
February 14, 2022 Β· Declared Dead Β· π 2023 2nd International Conference on Cloud Computing, Big Data Application and Software Engineering (CBASE)
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Authors
Maosheng Zhong, Gen Liu, Hongwei Li, Jiangling Kuang, Jinshan Zeng, Mingwen Wang
arXiv ID
2202.07612
Category
cs.SE: Software Engineering
Citations
14
Venue
2023 2nd International Conference on Cloud Computing, Big Data Application and Software Engineering (CBASE)
Last Checked
4 months ago
Abstract
Automatic code generation is to generate the program code according to the given natural language description. The current mainstream approach uses neural networks to encode natural language descriptions, and output abstract syntax trees (AST) at the decoder, then convert the AST into program code. While the generated code largely conforms to specific syntax rules, two problems are still ignored. One is missing program testing, an essential step in the process of complete code implementation; the other is only focusing on the syntax compliance of the generated code, while ignoring the more important program functional requirements. The paper proposes a CodeGen-Test model, which adds program testing steps and incorporates program testing information to iteratively generate code that meets the functional requirements of the program, thereby improving the quality of code generation. At the same time, the paper proposes a new evaluation metric, test accuracy (Test-Acc), which represents the proportion of passing program test in generated code. Different from the previous evaluation metric, which only evaluates the quality of code generation from the perspective of character similarity, the Test-Acc can evaluate the quality of code generation from the Program functions. Moreover, the paper evaluates the CodeGen-test model on a python data set "hearthstone legend". The experimental results show the proposed method can effectively improve the quality of generated code. Compared with the existing optimal model, CodeGen-Test model improves the Bleu value by 0.2%, Rouge-L value by 0.3% and Test-Acc by 6%.
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