Alexander Shypula
2023
Explain-then-translate: an analysis on improving program translation with self-generated explanations
Zilu Tang
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Mayank Agarwal
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Alexander Shypula
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Bailin Wang
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Derry Wijaya
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Jie Chen
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Yoon Kim
Findings of the Association for Computational Linguistics: EMNLP 2023
This work explores the use of self-generated natural language explanations as an intermediate step for code-to-code translation with language models. Across three types of explanations and 19 programming languages constructed from the MultiPL-E dataset, we find the explanations to be particularly effective in the zero-shot case, improving performance by 12% on average. Improvements with natural language explanations are particularly pronounced on difficult programs. We release our dataset, code, and canonical solutions in all 19 languages.
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Co-authors
- Zilu Tang 1
- Mayank Agarwal 1
- Bailin Wang 1
- Derry Tanti Wijaya 1
- Jie Chen 1
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- Yoon Kim 1