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11 days ago

Relation-Aware Collaborative Learning for Unified Aspect-Based Sentiment Analysis

{Tieyun Qian, Zhuang Chen}
Relation-Aware Collaborative Learning for Unified Aspect-Based Sentiment Analysis
Abstract

Aspect-based sentiment analysis (ABSA) involves three subtasks, i.e., aspect term extraction, opinion term extraction, and aspect-level sentiment classification. Most existing studies focused on one of these subtasks only. Several recent researches made successful attempts to solve the complete ABSA problem with a unified framework. However, the interactive relations among three subtasks are still under-exploited. We argue that such relations encode collaborative signals between different subtasks. For example, when the opinion term is extit{{}delicious{''}}, the aspect term must be extit{{}food{''}} rather than extit{{``}place{''}}. In order to fully exploit these relations, we propose a Relation-Aware Collaborative Learning (RACL) framework which allows the subtasks to work coordinately via the multi-task learning and relation propagation mechanisms in a stacked multi-layer network. Extensive experiments on three real-world datasets demonstrate that RACL significantly outperforms the state-of-the-art methods for the complete ABSA task.

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