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Home / Papers / Target-Aspect-Sentiment Joint Detection for Aspect-Based Sentiment Analysis

Target-Aspect-Sentiment Joint Detection for Aspect-Based Sentiment Analysis

161 Citations2020
Hai Wan, Yufei Yang, Jianfeng Du

The proposed method relies on a pre-trained language model and can capture the dependence on both targets and aspects for sentiment prediction and achieves a high performance in detecting target-aspect-sentiment triples even for the implicit target cases.

Abstract

<jats:p>Aspect-based sentiment analysis (ABSA) aims to detect the targets (which are composed by continuous words), aspects and sentiment polarities in text. Published datasets from SemEval-2015 and SemEval-2016 reveal that a sentiment polarity depends on both the target and the aspect. However, most of the existing methods consider predicting sentiment polarities from either targets or aspects but not from both, thus they easily make wrong predictions on sentiment polarities. In particular, where the target is implicit, i.e., it does not appear in the given text, the methods predicting sentiment polarities from targets do not work. To tackle these limitations in ABSA, this paper proposes a novel method for target-aspect-sentiment joint detection. It relies on a pre-trained language model and can capture the dependence on both targets and aspects for sentiment prediction. Experimental results on the SemEval-2015 and SemEval-2016 restaurant datasets show that the proposed method achieves a high performance in detecting target-aspect-sentiment triples even for the implicit target cases; moreover, it even outperforms the state-of-the-art methods for those subtasks of target-aspect-sentiment detection that they are competent to.</jats:p>