CSECU-DSG@ Causal News Corpus 2022: Fusion of RoBERTa Transformers Variants for Causal Event Classification

Abstract

Identifying cause-effect relationships in sentences is one of the formidable tasks to tackle the challenges of inference and understanding of natural language. However, the diversity of word semantics and sentence structure makes it challenging to determine the causal relationship effectively. To address these challenges, CASE-2022 shared task 3 introduced a task focusing on event causality identification with causal news corpus. This paper presents our participation in this task, especially in subtask 1 which is the causal event classification task. To tackle the task challenge, we propose a unified neural model through exploiting two fine-tuned transformer models including RoBERTa and Twitter-RoBERTa. For the score fusion, we combine the prediction scores of each component model using weighted arithmetic mean to generate the probability score for class label identification. The experimental results showed that our proposed method achieved the top performance (ranked 1st) among the participants.

Type
Publication
Proceedings of the 5th Workshop on Challenges and Applications of Automated Extraction of Socio-political Events from Text
Abdul Aziz
Abdul Aziz
Research Assistant (Full Time)
Md. Akram Hossain
Md. Akram Hossain
Research Assistant (Full Time)
Abu Nowshed Chy
Abu Nowshed Chy
Assistant Professor