Corpus ID: 212725917

EDA: Enriching Emotional Dialogue Acts using an Ensemble of Neural Annotators

@inproceedings{Bothe2020EDAEE,
  title={EDA: Enriching Emotional Dialogue Acts using an Ensemble of Neural Annotators},
  author={Chandrakant Bothe and Cornelius Weber and Sven Magg and Stefan Wermter},
  booktitle={LREC},
  year={2020}
}
  • Chandrakant Bothe, Cornelius Weber, +1 author Stefan Wermter
  • Published in LREC 2020
  • Computer Science
  • The recognition of emotion and dialogue acts enriches conversational analysis and help to build natural dialogue systems. Emotion interpretation makes us understand feelings and dialogue acts reflect the intentions and performative functions in the utterances. However, most of the textual and multi-modal conversational emotion corpora contain only emotion labels but not dialogue acts. To address this problem, we propose to use a pool of various recurrent neural models trained on a dialogue act… CONTINUE READING

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