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Coder Reviewer Reranking for Code Generation

Coder-Reviewer reranking improves code generation accuracy by combining Coder and Reviewer models and outperforms other methods across various datasets and languages.

Year
2022
Venue
arXiv 2022
Authors
7
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Abstract onlyARXIV-DEFAULT

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arxiv.org/abs/2211.16490ARXIV-DEFAULT
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Abstract

Sampling diverse programs from a code language model and reranking with model likelihood is a popular method for code generation but it is prone to preferring degenerate solutions. Inspired by collaborative programming, we propose Coder-Reviewer reranking. We augment Coder language models from past work, which generate programs given language instructions, with Reviewer models, which evaluate the likelihood of the instruction given the generated programs. We perform an extensive study across six datasets with eight models from three model families. Experimental results show that Coder-Reviewer reranking leads to consistent and significant improvement (up to 17% absolute accuracy gain) over reranking with the Coder model only. When combined with executability filtering, Coder-Reviewer reranking can often outperform the minimum Bayes risk method. Coder-Reviewer reranking is easy to implement by prompting, can generalize to different programming languages, and works well with off-the-shelf hyperparameters.

Authors

7