Type-aware Decoding via Explicitly Aggregating Event Information for Document-level Event Extraction
Zhao, Gang, Shi, Yidong, Lu, Shudong, Yang, Xinjie, Dong, Guanting, Xu, Jian, Gong, Xiaocheng, Li, Si
–arXiv.org Artificial Intelligence
Document-level event extraction (DEE) faces two main challenges: arguments-scattering and multi-event. Although previous methods attempt to address these challenges, they overlook the interference of event-unrelated sentences during event detection and neglect the mutual interference of different event roles during argument extraction. Therefore, this paper proposes a novel Schema-based Explicitly Aggregating~(SEA) model to address these limitations. SEA aggregates event information into event type and role representations, enabling the decoding of event records based on specific type-aware representations. By detecting each event based on its event type representation, SEA mitigates the interference caused by event-unrelated information. Furthermore, SEA extracts arguments for each role based on its role-aware representations, reducing mutual interference between different roles. Experimental results on the ChFinAnn and DuEE-fin datasets show that SEA outperforms the SOTA methods.
arXiv.org Artificial Intelligence
Oct-16-2023
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