STAR: Stepwise Task Augmentation with Relation Learning for Aspect Sentiment Quad Prediction
Wenna Lai, Haoran Xie, Guandong Xu, Qing Li

TL;DR
This paper introduces STAR, a stepwise task augmentation framework with relation learning for aspect sentiment quad prediction, improving dependency modeling and performance especially in low-resource settings.
Contribution
STAR decomposes ASQP into auxiliary subtasks with increasing relational granularity, enhancing relational learning and prediction accuracy.
Findings
Outperforms existing methods on four benchmark datasets.
Achieves over 2% F1 improvement in low-resource scenarios.
Effectively models sentiment dependencies through stepwise augmentation.
Abstract
Aspect-based sentiment analysis (ABSA) aims to identify four sentiment elements, including aspect term, aspect category, opinion term, and sentiment polarity. These elements construct a complete picture of sentiments. The most challenging task, aspect sentiment quad prediction (ASQP), requires predicting all four elements simultaneously and is hindered by the difficulty of accurately modeling dependencies among sentiment elements. A key challenge lies in the scarcity of annotated data, which limits the model ability to understand and reason about the relational dependencies required for effective quad prediction. To address this challenge, we propose a stepwise task augmentation framework with relation learning that decomposes ASQP into a sequence of auxiliary subtasks with increasing relational granularity. Specifically, STAR incrementally constructs auxiliary data by augmenting the…
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Taxonomy
TopicsSentiment Analysis and Opinion Mining · Advanced Text Analysis Techniques · Topic Modeling
