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EmotionX-Area66: Predicting Emotions in Dialogues using Hierarchical Attention Network with Sequence Labeling
2018
Proceedings of the Sixth International Workshop on Natural Language Processing for Social Media
This paper presents our system submitted to the EmotionX challenge. It is an emotion detection task on dialogues in the EmotionLines dataset. We formulate this as a hierarchical network where network learns data representation at both utterance level and dialogue level. Our model is inspired by Hierarchical Attention network (HAN) and uses pre-trained word embeddings as features. We formulate emotion detection in dialogues as a sequence labeling problem to capture the dependencies among labels.
doi:10.18653/v1/w18-3509
dblp:conf/acl-socialnlp/SaxenaBP18
fatcat:qvhlrjtp3bhpdkfis3bjkj5d4q