NLP NAACL

Graph Convolutional Networks for Event Causality Identification with Rich Document-level Structures

March 11, 2021

We study the problem of Event Causality Identification (ECI) to detect causal relation between event mention pairs in text. Although deep learning models have recently shown state-of-the-art performance for ECI, they are limited to the intra-sentence setting where event mention pairs are presented in the same sentences. This work addresses this issue by developing a novel deep learning model for document-level ECI (DECI) to accept inter-sentence event mention pairs. As such, we propose a graph-based model that constructs interaction graphs to capture relevant connections between important objects for DECI in input documents. Such interaction graphs are then consumed by graph convolutional networks to learn document context-augmented representations for causality prediction between events. Various information sources are introduced to enrich the interaction graphs for DECI, featuring discourse, syntax, and semantic information. Our extensive experiments show that the proposed model achieves state-of-the-art performance on two benchmark datasets.

Overall

< 1 minute

Minh Tran Phu, Thien Huu Nguyen

NAACL 2021

Share Article

Related publications

NLP NAACL Top Tier
April 4, 2024

*Thanh-Thien Le, *Viet Dao, *Linh Van Nguyen, Nhung Nguyen, Linh Ngo Van, Thien Huu Nguyen

GA-LLM NLP NAACL Top Tier
April 4, 2024

Thang Le, Tuan Luu

NLP EMNLP Findings
January 26, 2024

Thang Le, Luu Anh Tuan