Yuxuan Zhu
Papers on this page may belong to the following people: Yuxuan Zhu, Yuxuan Zhu, Yuxuan Zhu
2026
Attribution-Based Analysis and Optimization of Modular Agentic Workflows
Yingxuan Yang | Bo Huang | Siyuan Qi | Chao Feng | Haoyi Hu | Yuxuan Zhu | Jinbo Hu | Haoran Zhao | Ziyi He | Xiao Liu | ZongYu Wang | Muning Wen | Lin Qiu | Xuezhi Cao | Xunliang Cai | Yong Yu | Weinan Zhang
Findings of the Association for Computational Linguistics: ACL 2026
Yingxuan Yang | Bo Huang | Siyuan Qi | Chao Feng | Haoyi Hu | Yuxuan Zhu | Jinbo Hu | Haoran Zhao | Ziyi He | Xiao Liu | ZongYu Wang | Muning Wen | Lin Qiu | Xuezhi Cao | Xunliang Cai | Yong Yu | Weinan Zhang
Findings of the Association for Computational Linguistics: ACL 2026
Agentic workflows solve complex tasks by orchestrating modular components (e.g., planning, reasoning, action, reflection) built on top of LLM backbones. A practical but underexplored question is model allocation: given a fixed workflow decomposition and a pool of candidate LLMs, which components should be upgraded (and with which models) to upgrade task performance, and how can we attribute gains to individual upgrades and their interactions?We present ShapleyFlow, a cooperative game theoretic framework that models component upgrades as players and evaluates component coalitions to compute Shapley values. This yields interaction-aware attribution and supports Shapley-guided configuration recommendation for model allocation under a fixed workflow structure.We further introduce CapaBench, a benchmark of 1,500+ tasks across seven domains (shopping, navigation, ticketing, mathematics, operating systems, robotic coordination, and automated theorem proving).Across 9 representative LLMs and all 24 upgrade coalitions in a 4-component workflow, ShapleyFlow provides (i) principled, interaction-aware attribution for modular workflows and (ii) actionable model-allocation recommendations that improve over strong single-model baselines.
2025
Huatuo-26M, a Large-scale Chinese Medical QA Dataset
Xidong Wang | Jianquan Li | Shunian Chen | Yuxuan Zhu | Xiangbo Wu | Zhiyi Zhang | Xiaolong Xu | Junying Chen | Jie Fu | Xiang Wan | Anningzhe Gao | Benyou Wang
Findings of the Association for Computational Linguistics: NAACL 2025
Xidong Wang | Jianquan Li | Shunian Chen | Yuxuan Zhu | Xiangbo Wu | Zhiyi Zhang | Xiaolong Xu | Junying Chen | Jie Fu | Xiang Wan | Anningzhe Gao | Benyou Wang
Findings of the Association for Computational Linguistics: NAACL 2025
Large Language Models infuse newfound vigor into the advancement of the medical domain, yet the scarcity of data poses a significant bottleneck hindering community progress. In this paper, we release the largest ever medical Question Answering (QA) dataset with 26 Million QA pairs named Huatuo-26M. We benchmark many existing approaches in our dataset in terms of both retrieval and generation. We also experimentally show the benefit of the proposed dataset in many aspects: (i) it serves as a fine-tuning data for training medical Large Language Models (LLMs); (ii) it works as an external knowledge source for retrieval-augmented generation (RAG); (iii) it demonstrates transferability by enhancing zero-shot performance on other QA datasets; and (iv) it aids in training biomedical model as a pre-training corpus. Our empirical findings substantiate the dataset’s utility in these domains, thereby confirming its significance as a resource in the medical QA landscape.