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From Sentiment Annotations to Sentiment Prediction through Discourse Augmentation

2020-11-05 18:28:13
Patrick Huber, Giuseppe Carenini

Abstract

Sentiment analysis, especially for long documents, plausibly requires methods capturing complex linguistics structures. To accommodate this, we propose a novel framework to exploit task-related discourse for the task of sentiment analysis. More specifically, we are combining the large-scale, sentiment-dependent MEGA-DT treebank with a novel neural architecture for sentiment prediction, based on a hybrid TreeLSTM hierarchical attention model. Experiments show that our framework using sentiment-related discourse augmentations for sentiment prediction enhances the overall performance for long documents, even beyond previous approaches using well-established discourse parsers trained on human annotated data. We show that a simple ensemble approach can further enhance performance by selectively using discourse, depending on the document length.

Abstract (translated)

URL

https://arxiv.org/abs/2011.03021

PDF

https://arxiv.org/pdf/2011.03021.pdf


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