Deepanway Ghosal, Navonil Majumder, Soujanya Poria, Niyati Chhaya, Alexander Gelbukh
Emotion recognition in conversation (ERC) has received much attention, lately, from researchers due to its potential widespread applications in diverse areas, such as health-care, education, and human resources. In this paper, we present Dialogue Graph Convolutional Network (DialogueGCN), a graph neural network based approach to ERC. We leverage self and inter-speaker dependency of the interlocutors to model conversational context for emotion recognition. Through the graph network, DialogueGCN addresses context propagation issues present in the current RNN-based methods. We empirically show that this method alleviates such issues, while outperforming the current state of the art on a number of benchmark emotion classification datasets.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Emotion Recognition | SEMAINE | MAE (Arousal) | 0.161 | DialogueGCN |
| Emotion Recognition | SEMAINE | MAE (Expectancy) | 0.168 | DialogueGCN |
| Emotion Recognition | SEMAINE | MAE (Power) | 7.68 | DialogueGCN |
| Emotion Recognition | SEMAINE | MAE (Valence) | 0.157 | DialogueGCN |
| Emotion Recognition | CPED | Accuracy of Sentiment | 47.69 | DialogueGCN |
| Emotion Recognition | CPED | Macro-F1 of Sentiment | 45.12 | DialogueGCN |
| Emotion Recognition | MELD | Accuracy | 59.46 | DialogueGCN |
| Emotion Recognition | MELD | Weighted-F1 | 58.1 | DialogueGCN |
| Emotion Recognition | IEMOCAP | Weighted-F1 | 64.37 | DialogueGCN |