CLLGApr 26, 2020

Relational Graph Attention Network for Aspect-based Sentiment Analysis

arXiv:2004.12362v11041 citations
AI Analysis

This work addresses aspect-based sentiment analysis for online reviews, offering a domain-specific improvement by better establishing aspect-opinion connections.

The paper tackled the problem of confusing connections between aspects and opinion words in aspect-based sentiment analysis by encoding syntax information through a unified aspect-oriented dependency tree and a relational graph attention network (R-GAT), resulting in significantly improved performance on SemEval 2014 and Twitter datasets.

Aspect-based sentiment analysis aims to determine the sentiment polarity towards a specific aspect in online reviews. Most recent efforts adopt attention-based neural network models to implicitly connect aspects with opinion words. However, due to the complexity of language and the existence of multiple aspects in a single sentence, these models often confuse the connections. In this paper, we address this problem by means of effective encoding of syntax information. Firstly, we define a unified aspect-oriented dependency tree structure rooted at a target aspect by reshaping and pruning an ordinary dependency parse tree. Then, we propose a relational graph attention network (R-GAT) to encode the new tree structure for sentiment prediction. Extensive experiments are conducted on the SemEval 2014 and Twitter datasets, and the experimental results confirm that the connections between aspects and opinion words can be better established with our approach, and the performance of the graph attention network (GAT) is significantly improved as a consequence.

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