Rui Zhu
2025
Knowledge-Aware Co-Reasoning for Multidisciplinary Collaboration
Xurui Li
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Wanghaijiao
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Kaisong Song
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Rui Zhu
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Haixu Tang
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
Large language models (LLMs) have shown significant potential to improve diagnostic performance for clinical professionals. Existing multi-agent paradigms rely mainly on prompt engineering, suffering from improper agent selection and insufficient knowledge integration. In this work, we propose a novel framework KACR (Knowledge-Aware Co-Reasoning) that integrates structured knowledge reasoning into multidisciplinary collaboration from two aspects: (1) a reinforcement learning-optimized agent that uses clinical knowledge graphs to guide dynamic discipline determination; (2) a multidisciplinary collaboration strategy that enables robust consensus through integration of domain-specific expertise and interdisciplinary persuasion mechanism. Extensive experiments conducted on both academic and real-world datasets demonstrate the effectiveness of our method.
2023
STINMatch: Semi-Supervised Semantic-Topological Iteration Network for Financial Risk Detection via News Label Diffusion
Xurui Li
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Yue Qin
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Rui Zhu
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Tianqianjin Lin
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Yongming Fan
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Yangyang Kang
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Kaisong Song
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Fubang Zhao
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Changlong Sun
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Haixu Tang
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Xiaozhong Liu
Proceedings of the 2023 Conference on Empirical Methods in Natural Language Processing
Commercial news provide rich semantics and timely information for automated financial risk detection. However, unaffordable large-scale annotation as well as training data sparseness barrier the full exploitation of commercial news in risk detection. To address this problem, we propose a semi-supervised Semantic-Topological Iteration Network, STINMatch, along with a news-enterprise knowledge graph (NEKG) to endorse the risk detection enhancement. The proposed model incorporates a label correlation matrix and interactive consistency regularization techniques into the iterative joint learning framework of text and graph modules. The carefully designed framework takes full advantage of the labeled and unlabeled data as well as their interrelations, enabling deep label diffusion coordination between article-level semantics and label correlations following the topological structure. Extensive experiments demonstrate the superior effectiveness and generalization ability of STINMatch.
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- Xurui Li 2
- Kaisong Song 2
- Haixu Tang 2
- Yongming Fan 1
- Yangyang Kang 1
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