ACL2021

Making Flexible Use of Subtasks: A Multiplex Interaction Network for Unified Aspect-based Sentiment Analysis

Guoxin Yu, Xiang Ao, Ling Luo, Min Yang, Xiaofei Sun, Jiwei Li, Qing He

Abstract

Aspect Term Extraction (ATE), Opinion Term Extraction (OTE) and Aspect Sentiment Classification (ASC) are the essential building blocks of Aspect-based Sentiment Analysis (ABSA). They are typically treated as separate tasks and are individually studied by previous work. Recent studies intend to incorporate multiple sub-tasks into a unified framework, but suffer from the following major disadvantages: (1) ABSA models are extremely fragile when some sub-tasks are absent; (2) the interactive relations among subtasks are not adequate. To this end, we propose a multi-task learning approach named MIN (Multiplex Interaction Network) to make flexible use of sub-tasks for a unified ABSA. We divide the sub-tasks of ABSA into extractive sub-tasks and classification sub-tasks, and optimize these sub-tasks in a unified manner with multiplex interaction mechanisms. Specifically, we devise a pairwise attention to exploit bidirectional interactions between any arbitrary pair of extractive sub-tasks and a consistency-weighting to perform unidirectional interaction from an extractive sub-task to a classification sub-task. Since the proposed interaction mechanisms are task-agnostic, our model can also work well when some specific sub-tasks are absent. Extensive experiments on two widely used benchmarks with different numbers of sub-tasks demonstrate the superiority of the proposed model.