DialogueRNN: An Attentive RNN for Emotion Detection in Conversations
About
Emotion detection in conversations is a necessary step for a number of applications, including opinion mining over chat history, social media threads, debates, argumentation mining, understanding consumer feedback in live conversations, etc. Currently, systems do not treat the parties in the conversation individually by adapting to the speaker of each utterance. In this paper, we describe a new method based on recurrent neural networks that keeps track of the individual party states throughout the conversation and uses this information for emotion classification. Our model outperforms the state of the art by a significant margin on two different datasets.
Navonil Majumder, Soujanya Poria, Devamanyu Hazarika, Rada Mihalcea, Alexander Gelbukh, Erik Cambria• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Emotion Recognition in Conversation | IEMOCAP (test) | Weighted Average F1 Score64.65 | 154 | |
| Emotion Recognition in Conversation | MELD | Weighted Avg F165.3 | 137 | |
| Conversational Emotion Recognition | IEMOCAP | Weighted Average F1 Score64.65 | 129 | |
| Emotion Recognition in Conversation | MELD (test) | Weighted F165.3 | 118 | |
| Emotion Detection | EmoryNLP (test) | Weighted-F10.3754 | 96 | |
| Dialogue Emotion Detection | EmoryNLP | Weighted Avg F137.54 | 80 | |
| Emotion Recognition | IEMOCAP | -- | 71 | |
| Emotion Detection | DailyDialog (test) | Micro-F10.5065 | 53 | |
| Machine Reading Comprehension | Molweni (test) | EM45.4 | 49 | |
| Multimodal Emotion Recognition in Conversation | MELD standard (test) | WF165.31 | 38 |
Showing 10 of 28 rows