Tianyu Zheng
2026
COIG-P: A High-Quality and Large-Scale Chinese Preference Dataset for Alignment with Human Values
Siwei Wu | JinCheng Ren | Xeron Du | Shuyue Guo | Xingwei Qu | Yiming Liang | Jie Liu | Yunwen Li | Tyler Loakman | Tianyu Zheng | Boyu Feng | Huaqing Yuan | Zili Wang | Jiaheng Liu | Wenhao Huang | Chenglin Cai | Haoran Que | Jian Yang | Yuelin Bai | Zekun Moore Wang | Zhouliang Yu | Qunshu Lin | Ding Pan | Yuchen Eleanor Jiang | Tiannan Wang | Wangchunshu Zhou | Shenzhi Wang | Xingyuan Bu | Minghao Liu | Guoyin Wang | Ge Zhang | Chenghua Lin
Findings of the Association for Computational Linguistics: EACL 2026
Siwei Wu | JinCheng Ren | Xeron Du | Shuyue Guo | Xingwei Qu | Yiming Liang | Jie Liu | Yunwen Li | Tyler Loakman | Tianyu Zheng | Boyu Feng | Huaqing Yuan | Zili Wang | Jiaheng Liu | Wenhao Huang | Chenglin Cai | Haoran Que | Jian Yang | Yuelin Bai | Zekun Moore Wang | Zhouliang Yu | Qunshu Lin | Ding Pan | Yuchen Eleanor Jiang | Tiannan Wang | Wangchunshu Zhou | Shenzhi Wang | Xingyuan Bu | Minghao Liu | Guoyin Wang | Ge Zhang | Chenghua Lin
Findings of the Association for Computational Linguistics: EACL 2026
Existing Chinese preference datasets suffer from limited scale, restricted domain coverage, and insufficiently rigorous data validation. Human annotation significantly limits the scalability of human preference datasets. As a result, Chinese Alignment and Chinese Reward Models (CRM) have not yet been thoroughly explored. To address these challenges, we design an LLM-based data annotation pipeline with no human intervention. Based on this pipeline, we curate COIG-P (Chinese Open Instruction Generalist - Preference), a high-quality, large-scale Chinese preference dataset consisting of 1M Chinese preference pairs and 92k carefully curated Chinese queries across diverse domains, including Chat, Coding, Maths, and others. We conduct experiments to verify the quality of COIG-P from two perspectives. (1) COIG-P brings significant performance improvements for the Qwen2/2.5 and Infinity-Instruct model series on AlignBench through DPO, with gains ranging from 2% to 12%. Furthermore, it significantly outperforms other existing Chinese preference datasets. (2) We train an 8B-sized CRM and manually annotate a Chinese Reward Benchmark (CRBench). Our CRM demonstrates robust scoring ability on CRBench. In addition, in practical data construction experiments, the quality of the data constructed by our CRM is comparable to that produced by GPT-4o.
2025
MMMU-Pro: A More Robust Multi-discipline Multimodal Understanding Benchmark
Xiang Yue | Tianyu Zheng | Yuansheng Ni | Yubo Wang | Kai Zhang | Shengbang Tong | Yuxuan Sun | Botao Yu | Ge Zhang | Huan Sun | Yu Su | Wenhu Chen | Graham Neubig
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Xiang Yue | Tianyu Zheng | Yuansheng Ni | Yubo Wang | Kai Zhang | Shengbang Tong | Yuxuan Sun | Botao Yu | Ge Zhang | Huan Sun | Yu Su | Wenhu Chen | Graham Neubig
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
This paper introduces MMMU-Pro, a robust version of the Massive Multi-discipline Multimodal Understanding and Reasoning (MMMU) benchmark. MMMU-Pro rigorously assesses multimodal models’ true understanding and reasoning capabilities through a three-step process based on MMMU: (1) filtering out questions answerable by text-only models, (2) augmenting candidate options, and (3) introducing a vision-only input setting where questions are embedded within images. This setting challenges AI to truly “see” and “read” simultaneously, testing a core human cognitive skill of seamlessly integrating visual and textual information. Results show that model performance is substantially lower on MMMU-Pro than on MMMU, ranging from 16.8% to 26.9% across models. We explore the impact of OCR prompts and Chain of Thought (CoT) reasoning, finding that OCR prompts have minimal effect while CoT generally improves performance. MMMU-Pro provides a more rigorous evaluation tool, closely mimicking real-world scenarios and offering valuable directions for future multimodal research.
COIG-CQIA: Quality is All You Need for Chinese Instruction Fine-tuning
Yuelin Bai | Xeron Du | Yiming Liang | Leo Jin | Junting Zhou | Ziqiang Liu | Feiteng Fang | Mingshan Chang | Tianyu Zheng | Xincheng Zhang | Nuo Ma | Zekun Moore Wang | Ruibin Yuan | Haihong Wu | Hongquan Lin | Wenhao Huang | Jiajun Zhang | Chenghua Lin | Jie Fu | Min Yang | Shiwen Ni | Ge Zhang
Findings of the Association for Computational Linguistics: NAACL 2025
Yuelin Bai | Xeron Du | Yiming Liang | Leo Jin | Junting Zhou | Ziqiang Liu | Feiteng Fang | Mingshan Chang | Tianyu Zheng | Xincheng Zhang | Nuo Ma | Zekun Moore Wang | Ruibin Yuan | Haihong Wu | Hongquan Lin | Wenhao Huang | Jiajun Zhang | Chenghua Lin | Jie Fu | Min Yang | Shiwen Ni | Ge Zhang
Findings of the Association for Computational Linguistics: NAACL 2025
Remarkable progress on large language models (LLMs), particularly in English, has facilitated impressive capabilities in following human instructions. However, there remains a noticeable gap in instruction fine-tuning for Chinese, where the complex linguistic features pose significant challenges. Existing datasets, generally distilled from English-centric LLMs, are not well-aligned with Chinese users’ interaction patterns. To bridge this gap, we introduce COIG-CQIA, a new Chinese instruction tuning dataset derived from various real-world data resources and undergoing comprehensive human verification. We conduct extensive experiments on COIG-CQIA, and compare them with strong baseline models and datasets. The experimental results show that models trained on COIG-CQIA achieve highly competitive performance in diverse benchmarks. Additionally, our findings offer several insights for designing effective Chinese instruction-tuning datasets and data mixing strategies. Our dataset are available at https://huggingface.co/datasets/m-a-p/COIG-CQIA.
MAmmoTH-VL: Eliciting Multimodal Reasoning with Instruction Tuning at Scale
Jiawei Guo | Tianyu Zheng | Yizhi Li | Yuelin Bai | Bo Li | Yubo Wang | King Zhu | Graham Neubig | Wenhu Chen | Xiang Yue
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Jiawei Guo | Tianyu Zheng | Yizhi Li | Yuelin Bai | Bo Li | Yubo Wang | King Zhu | Graham Neubig | Wenhu Chen | Xiang Yue
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Open-source multimodal large language models (MLLMs) have shown significant potential in a broad range of tasks. However, their reasoning capabilities remain constrained by existing instruction-tuning datasets, which were predominately repurposed from academic datasets such as VQA, AI2D, and ChartQA. These datasets target simplistic tasks, and only provide phrase-level answers without any intermediate rationales.To address these challenges, we introduce a scalable and cost-effective method to construct a large-scale multimodal instruction-tuning dataset with rich intermediate rationales designed to elicit CoT reasoning. Using only open models, we create a dataset containing 12M instruction-response pairs to cover diverse reasoning-intensive tasks.Experiments demonstrate that training MLLMs on our dataset not only significantly improves reasoning capabilities, achieving state-of-the-art performance on benchmarks such as MathVerse (+8.1%), MMMU-Pro (+7%), and MuirBench (+13.3%), but also gains improvements of up to 4% on non-reasoning-based benchmarks.
LIME: Less Is More for MLLM Evaluation
King Zhu | Qianbo Zang | Shian Jia | Siwei Wu | Feiteng Fang | Yizhi Li | Shuyue Guo | Tianyu Zheng | Jiawei Guo | Bo Li | Haoning Wu | Xingwei Qu | Jian Yang | Ruibo Liu | Xiang Yue | Jiaheng Liu | Chenghua Lin | Hamid Alinejad-Rokny | Min Yang | Shiwen Ni | Wenhao Huang | Ge Zhang
Findings of the Association for Computational Linguistics: ACL 2025
King Zhu | Qianbo Zang | Shian Jia | Siwei Wu | Feiteng Fang | Yizhi Li | Shuyue Guo | Tianyu Zheng | Jiawei Guo | Bo Li | Haoning Wu | Xingwei Qu | Jian Yang | Ruibo Liu | Xiang Yue | Jiaheng Liu | Chenghua Lin | Hamid Alinejad-Rokny | Min Yang | Shiwen Ni | Wenhao Huang | Ge Zhang
Findings of the Association for Computational Linguistics: ACL 2025
Multimodal Large Language Models (MLLMs) are measured on numerous benchmarks like image captioning, visual question answer, and reasoning. However, these benchmarks often include overly simple or uninformative samples, making it difficult to effectively distinguish the performance of different MLLMs. Additionally, evaluating models across many benchmarks creates a significant computational burden. To address these issues, we propose LIME (Less Is More for MLLM Evaluation), a refined and efficient benchmark curated using a semi-automated pipeline. This pipeline filters out uninformative samples and eliminates answer leakage by focusing on tasks that require image-based understanding. Our experiments show that LIME reduces the number of samples by 76% and evaluation time by 77%, while it can more effectively distinguish different models’ abilities. Notably, we find that traditional automatic metrics like CIDEr are insufficient for evaluating MLLMs’ captioning performance, and excluding the caption task score yields a more accurate reflection of overall model performance. All code and data are available at https://anonymous.4open.science/r/LIME-49CD
KARPA: A Training-free Method of Adapting Knowledge Graph as References for Large Language Model’s Reasoning Path Aggregation
Siyuan Fang | Kaijing Ma | Tianyu Zheng | Xeron Du | Ningxuan Lu | Ge Zhang | Qingkun Tang
Findings of the Association for Computational Linguistics: ACL 2025
Siyuan Fang | Kaijing Ma | Tianyu Zheng | Xeron Du | Ningxuan Lu | Ge Zhang | Qingkun Tang
Findings of the Association for Computational Linguistics: ACL 2025
Large language models (LLMs) demonstrate exceptional performance across a variety of tasks, yet they are often affected by hallucinations and the timeliness of knowledge. Leveraging knowledge graphs (KGs) as external knowledge sources has emerged as a viable solution, but existing methods for LLM-based knowledge graph question answering (KGQA) are often limited by step-by-step decision-making on KGs, restricting the global planning and reasoning capabilities of LLMs, or they require fine-tuning or pre-training on specific KGs. To address these challenges, we propose Knowledge graph Assisted Reasoning Path Aggregation (KARPA), a novel framework that harnesses the global planning abilities of LLMs for efficient and accurate KG reasoning. KARPA operates in three steps: pre-planning relation paths using the LLM’s global planning capabilities, matching semantically relevant paths via an embedding model, and reasoning over these paths to generate answers. Unlike existing KGQA methods, KARPA avoids stepwise traversal, requires no additional training, and is adaptable to various LLM architectures. Extensive experimental results show that KARPA achieves state-of-the-art performance in KGQA tasks, delivering both high efficiency and accuracy.
2024
ChatMusician: Understanding and Generating Music Intrinsically with LLM
Ruibin Yuan | Hanfeng Lin | Yi Wang | Zeyue Tian | Shangda Wu | Tianhao Shen | Ge Zhang | Yuhang Wu | Cong Liu | Ziya Zhou | Liumeng Xue | Ziyang Ma | Qin Liu | Tianyu Zheng | Yizhi Li | Yinghao Ma | Yiming Liang | Xiaowei Chi | Ruibo Liu | Zili Wang | Chenghua Lin | Qifeng Liu | Tao Jiang | Wenhao Huang | Wenhu Chen | Jie Fu | Emmanouil Benetos | Gus Xia | Roger Dannenberg | Wei Xue | Shiyin Kang | Yike Guo
Findings of the Association for Computational Linguistics: ACL 2024
Ruibin Yuan | Hanfeng Lin | Yi Wang | Zeyue Tian | Shangda Wu | Tianhao Shen | Ge Zhang | Yuhang Wu | Cong Liu | Ziya Zhou | Liumeng Xue | Ziyang Ma | Qin Liu | Tianyu Zheng | Yizhi Li | Yinghao Ma | Yiming Liang | Xiaowei Chi | Ruibo Liu | Zili Wang | Chenghua Lin | Qifeng Liu | Tao Jiang | Wenhao Huang | Wenhu Chen | Jie Fu | Emmanouil Benetos | Gus Xia | Roger Dannenberg | Wei Xue | Shiyin Kang | Yike Guo
Findings of the Association for Computational Linguistics: ACL 2024
While LLMs demonstrate impressive capabilities in musical knowledge, we find that music reasoning is still an unsolved task.We introduce ChatMusician, an open-source large language model (LLM) that integrates intrinsic musical abilities. It is based on continual pre-training and finetuning LLaMA2 on a text-compatible music representation, ABC notation, and the music is treated as a second language.ChatMusician can understand and generate music with a pure text tokenizer without external multi-modal neural structures or tokenizers. Interestingly, endowing musical abilities does not harm language abilities, even achieving a slightly higher MMLU score.ChatMusician is capable of composing well-structured, full-length music, condition on texts, chords, melodies, motifs, musical forms, etc.On our meticulously curated college-level music understanding benchmark, MusicTheoryBench, ChatMusician surpasses LLaMA2 and GPT-3.5 by a noticeable margin. We show that ChatMusician preserves or even surpasses the original LLaMA2 7B’s language abilities by evaluating on MMLU benchmark.Our work reveals that LLMs can be an excellent compressor for music, which can be seen as humanity’s creative language, but there remains significant territory to be conquered.We release our 5B token music-language corpora MusicPiles, the collected MusicTheoryBench, code, model and demo.
OpenCodeInterpreter: Integrating Code Generation with Execution and Refinement
Tianyu Zheng | Ge Zhang | Tianhao Shen | Xueling Liu | Bill Yuchen Lin | Jie Fu | Wenhu Chen | Xiang Yue
Findings of the Association for Computational Linguistics: ACL 2024
Tianyu Zheng | Ge Zhang | Tianhao Shen | Xueling Liu | Bill Yuchen Lin | Jie Fu | Wenhu Chen | Xiang Yue
Findings of the Association for Computational Linguistics: ACL 2024
The introduction of large language models has significantly advanced code generation. However, open-source models often lack the execution capabilities and iterative refinement of advanced systems like the GPT-4 Code Interpreter. To address this, we introduce OpenCodeInterpreter, a family of open-source code systems designed for generating, executing, and iteratively refining code. Supported by Code Feedback, a dataset featuring 68K multi-turn interactions, OpenCodeInterpreter integrates execution and human feedback for dynamic code refinement. Our comprehensive evaluation of OpenCodeInterpreter across key benchmarks such as HumanEval, MBPP, and their enhanced versions from EvalPlus reveals its exceptional performance. Notably, OpenCodeInterpreter-33B achieves an accuracy of 83.2 (76.4) on the average (and plus versions) of HumanEval and MBPP, closely rivaling GPT-4’s 84.2 (76.2) and further elevates to 91.6 (84.6) with synthesized human feedback from GPT-4. OpenCodeInterpreterbrings the gap between open-source code generation models and proprietary systems like GPT-4 Code Interpreter.
MORE-3S:Multimodal-based Offline Reinforcement Learning with Shared Semantic Spaces
Tianyu Zheng | Ge Zhang | Xingwei Qu | Ming Kuang | Wenhao Huang | Zhaofeng He
Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024)
Tianyu Zheng | Ge Zhang | Xingwei Qu | Ming Kuang | Wenhao Huang | Zhaofeng He
Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024)
Drawing upon the intuition that aligning different modalities to the same semantic embedding space would allow models to understand states and actions more easily, we propose a new perspective to the offline reinforcement learning (RL) challenge. More concretely, we transform it into a supervised learning task by integrating multimodal and pre-trained language models. Our approach incorporates state information derived from images and action-related data obtained from text, thereby bolstering RL training performance and promoting long-term strategic thinking. We emphasize the contextual understanding of language and demonstrate how decision-making in RL can benefit from aligning states’ and actions’ representation with languages’ representation. Our method significantly outperforms current baselines as evidenced by evaluations conducted on Atari and OpenAI Gym environments. This contributes to advancing offline RL performance and efficiency while providing a novel perspective on offline RL.
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- Ge Zhang 8
- Wenhao Huang 5
- Wenhu Chen 4
- Chenghua Lin 4
- Xiang Yue 4
- Yuelin Bai 3
- Xeron Du 3
- Jie Fu 3
- Yizhi Li 3
- Yiming Liang 3
- Xingwei Qu 3
- Feiteng Fang 2
- Jiawei Guo 2
- Shuyue Guo 2
- Bo Li 2
- Ruibo Liu 2
- Jiaheng Liu 2
- Graham Neubig 2
- Shiwen Ni 2
- Tianhao Shen 2
- Yubo Wang 2
- Zekun Moore Wang 2
- Zili Wang 2
- Siwei Wu 2
- Min Yang 2
- Jian Yang 2
- Ruibin Yuan 2
- King Zhu 2
- Hamid Alinejad-Rokny 1
- Emmanouil Benetos 1
- Xingyuan Bu 1
- Chenglin Cai 1
- Mingshan Chang 1
- Xiaowei Chi 1
- Roger Dannenberg 1
- Siyuan Fang 1
- Boyu Feng 1
- Yike Guo 1
- Zhaofeng He 1
- Shian Jia 1
- Tao Jiang 1
- Yuchen Eleanor Jiang 1
- Leo Jin 1
- Shiyin Kang 1
- Ming Kuang 1
- Yunwen Li 1
- Hongquan Lin 1
- Hanfeng Lin 1
- Bill Yuchen Lin 1
- Qunshu Lin 1
- Ziqiang Liu 1
- Cong Liu 1
- Qin Liu 1
- Qifeng Liu 1
- Xueling Liu 1
- Jie Liu 1
- Minghao Liu 1
- Tyler Loakman 1
- Ningxuan Lu 1
- Nuo Ma 1
- Ziyang Ma 1
- Yinghao Ma 1
- Kaijing Ma 1
- Yuansheng Ni 1
- Ding Pan 1
- Haoran Que 1
- JinCheng Ren 1
- Yu Su 1
- Yuxuan Sun 1
- Huan Sun 1
- Qingkun Tang 1
- Zeyue Tian 1
- Shengbang Tong 1
- Yi Wang 1
- Tiannan Wang 1
- Shenzhi Wang 1
- Guoyin Wang 1
- Haihong Wu 1
- Shangda Wu 1
- Yuhang Wu 1
- Haoning Wu 1
- Gus Xia 1
- Liumeng Xue 1
- Wei Xue 1
- Botao Yu 1
- Zhouliang Yu 1
- Huaqing Yuan 1
- Qianbo Zang 1
- Kai Zhang 1
- Xincheng Zhang 1
- Jiajun Zhang 1
- Junting Zhou 1
- Ziya Zhou 1
- Wangchunshu Zhou 1