Jihua Kang
2025
DocFusion: A Unified Framework for Document Parsing Tasks
Mingxu Chai
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Ziyu Shen
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Chong Zhang
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Yue Zhang
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Xiao Wang
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Shihan Dou
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Jihua Kang
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Jiazheng Zhang
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Qi Zhang
Findings of the Association for Computational Linguistics: ACL 2025
Document parsing involves layout element detection and recognition, essential for extracting information. However, existing methods often employ multiple models for these tasks, leading to increased system complexity and maintenance overhead. While some models attempt to unify detection and recognition, they often fail to address the intrinsic differences in data representations, thereby limiting performance in document processing. Our research reveals that recognition relies on discrete tokens, whereas detection relies on continuous coordinates, leading to challenges in gradient updates and optimization. To bridge this gap, we propose the Gaussian-Kernel Cross-Entropy Loss (GK-CEL), enabling generative frameworks to handle both tasks simultaneously. Building upon GK-CEL, we propose DocFusion, a unified document parsing model with only 0.28B parameters. Additionally, we construct the DocLatex-1.6M dataset to provide high-quality training support. Experimental results show that DocFusion, equipped with GK-CEL, performs competitively across four core document parsing tasks, validating the effectiveness of our unified approach.
2013
Discourse Level Explanatory Relation Extraction from Product Reviews Using First-Order Logic
Qi Zhang
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Jin Qian
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Huan Chen
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Jihua Kang
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Xuanjing Huang
Proceedings of the 2013 Conference on Empirical Methods in Natural Language Processing
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- Qi Zhang 2
- Mingxu Chai 1
- Huan Chen 1
- Shihan Dou 1
- Xuan-Jing Huang (黄萱菁) 1
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