Yan Wang
Other people with similar names: Yan Wang
Unverified author pages with similar names: Yan Wang
2026
MultiFinBen: Benchmarking Large Language Models for Multilingual and Multimodal Financial Application
Xueqing Peng | Lingfei Qian | Yan Wang | Ruoyu Xiang | Yueru He | Yang Ren | Mingyang Jiang | Vincent Jim Zhang | Yuqing Guo | Jeff Zhao | Huan He | Yi Han | Yun Feng | Yuechen Jiang | Yupeng Cao | Haohang Li | Yangyang Yu | Xiaoyu Wang | Penglei Gao | Shengyuan Lin | Keyi Wang | Shanshan Yang | Yilun Zhao | Zhiwei Liu | Peng Lu | Jerry Huang | Suyuchen Wang | Triantafillos Papadopoulos | Polydoros Giannouris | Efstathia Soufleri | Nuo Chen | Zhiyang Deng | Heming Fu | Yijia Zhao | Mingquan Lin | Meikang Qiu | Kaleb E Smith | Arman Cohan | Xiao-Yang Liu | Jimin Huang | Guojun Xiong | Alejandro Lopez-Lira | Xi Chen | Junichi Tsujii | Jian-Yun Nie | Sophia Ananiadou | Qianqian Xie
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Xueqing Peng | Lingfei Qian | Yan Wang | Ruoyu Xiang | Yueru He | Yang Ren | Mingyang Jiang | Vincent Jim Zhang | Yuqing Guo | Jeff Zhao | Huan He | Yi Han | Yun Feng | Yuechen Jiang | Yupeng Cao | Haohang Li | Yangyang Yu | Xiaoyu Wang | Penglei Gao | Shengyuan Lin | Keyi Wang | Shanshan Yang | Yilun Zhao | Zhiwei Liu | Peng Lu | Jerry Huang | Suyuchen Wang | Triantafillos Papadopoulos | Polydoros Giannouris | Efstathia Soufleri | Nuo Chen | Zhiyang Deng | Heming Fu | Yijia Zhao | Mingquan Lin | Meikang Qiu | Kaleb E Smith | Arman Cohan | Xiao-Yang Liu | Jimin Huang | Guojun Xiong | Alejandro Lopez-Lira | Xi Chen | Junichi Tsujii | Jian-Yun Nie | Sophia Ananiadou | Qianqian Xie
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Real-world financial analysis involves information across multiple languages and modalities, from reports and news to scanned filings and meeting recordings. Yet most existing evaluations of LLMs in finance remain text-only, monolingual, and largely saturated by current models. To bridge these gaps, we present MultiFinBen, the first expert-annotated multilingual (five languages) and multimodal (text, vision, audio) benchmark for evaluating LLMs in realistic financial contexts. MultiFinBen introduces two new task families: multilingual financial reasoning, which tests cross-lingual evidence integration from filings and news, and financial OCR, which extracts structured text from scanned documents containing tables and charts. Rather than aggregating all available datasets, we apply a structured, difficulty-aware selection based on advanced model performance, ensuring balanced challenge and removing redundant tasks. Evaluating 21 leading LLMs shows that even frontier multimodal models like GPT-4o achieve only 46.01% overall, stronger on vision and audio but dropping sharply in multilingual settings. These findings expose persistent limitations in multilingual, multimodal, and expert-level financial reasoning. All datasets, evaluation scripts, and leaderboards are publicly released.
The Illusion of Specialization: Unveiling the Domain-Invariant "Standing Committee" in Mixture-of-Experts Models
Yan Wang | Yitao Xu | Nanhan Shen | Jinyan Su | Jimin Huang | Zining Zhu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Yan Wang | Yitao Xu | Nanhan Shen | Jinyan Su | Jimin Huang | Zining Zhu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Mixture of Experts models are widely assumed to achieve domain specialization through sparse routing. In this work, we question this assumption by introducing COMMITTEEAUDIT, a post hoc framework that analyzes routing behavior at the level of expert groups rather than individual experts. Across three representative models and the MMLU benchmark, we uncover a domain invariant Standing Committee. This is a compact coalition of routed experts that consistently captures the majority of routing mass across domains, layers, and routing budgets, even when architectures already include shared experts. Qualitative analysis further shows that Standing Committees anchor reasoning structure and syntax, while peripheral experts handle domain-specific knowledge. These findings reveal a strong structural bias toward centralized computation, suggesting that specialization in Mixture of Experts models is far less pervasive than commonly believed. Crucially, this inherent bias indicates that current training objectives, such as load-balancing losses that enforce uniform expert utilization, may be working against the model’s natural optimization path, thereby limiting training efficiency and performance.
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Co-authors
- Jimin Huang 2
- Sophia Ananiadou 1
- Yupeng Cao 1
- Nuo Chen 1
- Xi Chen 1
- Arman Cohan 1
- Zhiyang Deng 1
- Yun Feng 1
- Heming Fu 1
- Penglei Gao 1
- Polydoros Giannouris 1
- Yuqing Guo 1
- Yi Han 1
- Huan He 1
- Yueru He 1
- Jerry Huang 1
- Mingyang Jiang 1
- Yuechen Jiang 1
- Haohang Li 1
- Mingquan Lin 1
- Shengyuan Lin 1
- Xiao-Yang Liu 1
- Zhiwei Liu 1
- Alejandro Lopez-Lira 1
- Peng Lu 1
- Jian-Yun Nie 1
- Triantafillos Papadopoulos 1
- Xueqing Peng 1
- Lingfei Qian 1
- Meikang Qiu 1
- Yang Ren 1
- Nanhan Shen 1
- Kaleb E. Smith 1
- Efstathia Soufleri 1
- Jinyan Su 1
- Jun’ichi Tsujii 1
- Keyi Wang 1
- Suyuchen Wang 1
- Xiaoyu Wang 1
- Ruoyu Xiang 1
- Qianqian Xie 1
- Guojun Xiong 1
- Yitao Xu 1
- Shanshan Yang 1
- Yangyang Yu 1
- Vincent Jim Zhang 1
- Jeff Zhao 1
- Yijia Zhao 1
- Yilun Zhao 1
- Zining Zhu 1
Venues
- ACL2