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Investigating Typed Syntactic Dependencies for Targeted Sentiment Classification Using Graph Attention Neural Network

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arxiv 2002.09685 v3 pith:WLJSWVRF submitted 2020-02-22 cs.CL

Investigating Typed Syntactic Dependencies for Targeted Sentiment Classification Using Graph Attention Neural Network

classification cs.CL
keywords sentimentclassificationdependencygraphinformationnetworkneuraltargeted
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Targeted sentiment classification predicts the sentiment polarity on given target mentions in input texts. Dominant methods employ neural networks for encoding the input sentence and extracting relations between target mentions and their contexts. Recently, graph neural network has been investigated for integrating dependency syntax for the task, achieving the state-of-the-art results. However, existing methods do not consider dependency label information, which can be intuitively useful. To solve the problem, we investigate a novel relational graph attention network that integrates typed syntactic dependency information. Results on standard benchmarks show that our method can effectively leverage label information for improving targeted sentiment classification performances. Our final model significantly outperforms state-of-the-art syntax-based approaches.

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