ACL2024

Identifying while Learning for Document Event Causality Identification

Cheng Liu, Wei Xiang, Bang Wang

10 citations

Abstract

Event Causality Identification (ECI) aims to detect whether there exists a causal relation between two events in a document. Existing studies adopt a kind of identifying after learning paradigm, where events' representations are first learned and then used for the identification. Furthermore, they mainly focus on the causality existence, but ignore causal direction. In this paper, we take care of the causal direction and propose a new identifying while learning mode for the ECI task. We argue that a few causal relations can be easily identified with high confidence, and the directionality and structure of these identified causalities can be utilized to update events' representations for boosting next round of causality identification. To this end, this paper designs an iterative learning and identifying framework: In each iteration, we construct an event causality graph, on which events' causal structure representations are updated for boosting causal identification. Experiments on two public datasets show that our approach outperforms the state-of-theart algorithms in both evaluations for causality existence identification and direction identification. 1 * Corresponding author 1 The source code is available at https://github.com/ LchengC/iLIF Input Document and Events: Troy, Michigan Office Shootinge1 Follow -Up-1 Dead , 2 Injurede2, and Suspect Caught "A man suspectede3 of shooting three people, killinge4 one, at an accounting firm where was fired last week was arrestede5 after a high-speed chasee6 a few hours after the Monday morning attack", authorities said ...