Yuwei Zhao
2025
CodeJudge-Eval: Can Large Language Models be Good Judges in Code Understanding?
Yuwei Zhao
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Ziyang Luo
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Yuchen Tian
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Hongzhan Lin
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Weixiang Yan
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Annan Li
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Jing Ma
Proceedings of the 31st International Conference on Computational Linguistics
Recent advancements in large language models (LLMs) have showcased impressive code generation capabilities, primarily evaluated through language-to-code benchmarks. However, these benchmarks may not fully capture a model’s code understanding abilities. We introduce CodeJudge-Eval (CJ-Eval), a novel benchmark designed to assess LLMs’ code understanding abilities from the perspective of code judging rather than code generation. CJ-Eval challenges models to determine the correctness of provided code solutions, encompassing various error types and compilation issues. By leveraging a diverse set of problems and a fine-grained judging system, CJ-Eval addresses the limitations of traditional benchmarks, including the potential memorization of solutions. Evaluation of 12 well-known LLMs on CJ-Eval reveals that even state-of-the-art models struggle, highlighting the benchmark’s ability to probe deeper into models’ code understanding abilities. Our benchmark is available at https://github.com/CodeLLM-Research/CodeJudge-Eval .
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Co-authors
- Annan Li 1
- Hongzhan Lin 1
- Ziyang Luo 1
- Jing Ma 1
- Yuchen Tian 1
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