Peng Xu, Andrea Madotto, Chien-Sheng Wu, Ji Ho Park, Pascale Fung
In this paper, we propose Emo2Vec which encodes emotional semantics into vectors. We train Emo2Vec by multi-task learning six different emotion-related tasks, including emotion/sentiment analysis, sarcasm classification, stress detection, abusive language classification, insult detection, and personality recognition. Our evaluation of Emo2Vec shows that it outperforms existing affect-related representations, such as Sentiment-Specific Word Embedding and DeepMoji embeddings with much smaller training corpora. When concatenated with GloVe, Emo2Vec achieves competitive performances to state-of-the-art results on several tasks using a simple logistic regression classifier.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Sentiment Analysis | SST-5 Fine-grained classification | Accuracy | 43.6 | GloVe+Emo2Vec |
| Sentiment Analysis | SST-5 Fine-grained classification | Accuracy | 41.6 | Emo2Vec |
| Sentiment Analysis | SST-2 Binary classification | Accuracy | 82.3 | GloVe+Emo2Vec |
| Sentiment Analysis | SST-2 Binary classification | Accuracy | 81.2 | Emo2Vec |