Document detail
ID

oai:arXiv.org:2408.05715

Topic
Computer Science - Artificial Inte... Computer Science - Software Engine...
Author
Lyu, Zhi-Cun Li, Xin-Ye Xie, Zheng Li, Ming
Category

Computer Science

Year

2024

listing date

8/14/2024

Keywords
code correct science computer top generation
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Abstract

Code generation has been greatly enhanced by the profound advancements in Large Language Models (LLMs) recently.

Nevertheless, such LLM-based code generation approaches still struggle to generate error-free code in a few tries when faced with complex problems.

To address this, the prevailing strategy is to sample a huge number of candidate programs, with the hope of any one in them could work.

However, users of code generation systems usually expect to find a correct program by reviewing or testing only a small number of code candidates.

Otherwise, the system would be unhelpful.

In this paper, we propose Top Pass, a code ranking approach that identifies potential correct solutions from a large number of candidates.

Top Pass directly optimizes the pass@k loss function, enhancing the quality at the top of the candidate list.

This enables the user to find the correct solution within as few tries as possible.

Experimental results on four benchmarks indicate that our Top Pass method enhances the usability of code generation models by producing better ranking results, particularly achieving a 32.9\% relative improvement in pass@1 on CodeContests when compared to the state-of-the-art ranking method.

;Comment: Accepted by Frontier of Computer Science

Lyu, Zhi-Cun,Li, Xin-Ye,Xie, Zheng,Li, Ming, 2024, Top Pass: Improve Code Generation by Pass@k-Maximized Code Ranking

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