Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

MoEL: Mixture of Empathetic Listeners

About

Previous research on empathetic dialogue systems has mostly focused on generating responses given certain emotions. However, being empathetic not only requires the ability of generating emotional responses, but more importantly, requires the understanding of user emotions and replying appropriately. In this paper, we propose a novel end-to-end approach for modeling empathy in dialogue systems: Mixture of Empathetic Listeners (MoEL). Our model first captures the user emotions and outputs an emotion distribution. Based on this, MoEL will softly combine the output states of the appropriate Listener(s), which are each optimized to react to certain emotions, and generate an empathetic response. Human evaluations on empathetic-dialogues (Rashkin et al., 2018) dataset confirm that MoEL outperforms multitask training baseline in terms of empathy, relevance, and fluency. Furthermore, the case study on generated responses of different Listeners shows high interpretability of our model.

Zhaojiang Lin, Andrea Madotto, Jamin Shin, Peng Xu, Pascale Fung• 2019

Related benchmarks

TaskDatasetResultRank
Emotion ClassificationEMPATHETICDIALOGUES (test)
Accuracy32.2
49
Emotional Support ConversationESConv (test)
BLEU-28.8
44
Emotional Support ConversationExTES (test)
BLEU-28.5
15
Response GenerationEMPATHETICDIALOGUES (test)
PPL38.35
8
Emotional Support ConversationESConv
Perplexity133.1
6
Emotional Support ConversationESConv
Fluency36
6
Showing 6 of 6 rows

Other info

Follow for update