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arxiv: 1906.07599 · v1 · pith:DKPWFCUNnew · submitted 2019-06-18 · 💻 cs.CL

LTG-Oslo Hierarchical Multi-task Network: The importance of negation for document-level sentiment in Spanish

classification 💻 cs.CL
keywords sentimentmulti-tasknegationdeepdocument-levelhierarchicalltg-oslonetwork
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This paper details LTG-Oslo team's participation in the sentiment track of the NEGES 2019 evaluation campaign. We participated in the task with a hierarchical multi-task network, which used shared lower-layers in a deep BiLSTM to predict negation, while the higher layers were dedicated to predicting document-level sentiment. The multi-task component shows promise as a way to incorporate information on negation into deep neural sentiment classifiers, despite the fact that the absolute results on the test set were relatively low for a binary classification task.

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