Liran Wang
2026
MdEval: Massively Multilingual Code Debugging
Shukai Liu | Linzheng Chai | Jian Yang | Jiajun Shi | He Zhu | Liran Wang | Jin Ke | Wei Zhang | Hualei Zhu | Shuyue Guo | Tao Sun | Jiaheng Liu | Yunlong Duan | Yu Hao | Liqun Yang | Guanglin Niu | Ge Zhang | Zhoujun Li
Findings of the Association for Computational Linguistics: ACL 2026
Shukai Liu | Linzheng Chai | Jian Yang | Jiajun Shi | He Zhu | Liran Wang | Jin Ke | Wei Zhang | Hualei Zhu | Shuyue Guo | Tao Sun | Jiaheng Liu | Yunlong Duan | Yu Hao | Liqun Yang | Guanglin Niu | Ge Zhang | Zhoujun Li
Findings of the Association for Computational Linguistics: ACL 2026
Code large language models (LLMs) have made significant progress in code debugging by directly generating the correct code based on the buggy code snippet. Programming benchmarks, typically consisting of buggy code snippets and their associated test cases, are used to assess the debugging capabilities of LLMs. However, many existing benchmarks primarily focus on Python and are often limited in terms of language diversity (e.g., DebugBench and DebugEval). To advancethe field of multilingual debugging with LLMs, we propose the first massively multilingual debugging benchmark, which includes 3.9K test samples of 20 programming languages and covers the automated program repair (APR) task, the bug localization(BL) task, and the bug identification (BI) task. In addition, we introduce the debugging instruction corpora MdEval-Instruct by injecting bugs into the correct multilingual queries and solutions (xDebugGen). Further, a multilingual debugger xDebugCoder trained on MdEval-Instruct as a strong baseline specifically to handle bugs of a wide range of programming languages (e.g. “Missing Mut” in language Rust and “Misused Macro Definition” in language C). Our extensive experiments on MdEval reveal a notable performance gap between open-source and closed-source LLMs (e.g., GPT and Claudeseries), highlighting huge room for improvement in multilingual code debugging scenarios.
2020
StyleDGPT: Stylized Response Generation with Pre-trained Language Models
Ze Yang | Wei Wu | Can Xu | Xinnian Liang | Jiaqi Bai | Liran Wang | Wei Wang | Zhoujun Li
Findings of the Association for Computational Linguistics: EMNLP 2020
Ze Yang | Wei Wu | Can Xu | Xinnian Liang | Jiaqi Bai | Liran Wang | Wei Wang | Zhoujun Li
Findings of the Association for Computational Linguistics: EMNLP 2020
Generating responses following a desired style has great potentials to extend applications of open-domain dialogue systems, yet is refrained by lacking of parallel data for training. In this work, we explore the challenging task with pre-trained language models that have brought breakthrough to various natural language tasks. To this end, we introduce a KL loss and a style classifier to the fine-tuning step in order to steer response generation towards the target style in both a word-level and a sentence-level. Comprehensive empirical studies with two public datasets indicate that our model can significantly outperform state-of-the-art methods in terms of both style consistency and contextual coherence.