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AugESC: Large-scale Data Augmentation for Emotional Support Conversation with Pre-trained Language Models

2022-02-26 03:17:08
Chujie Zheng, Sahand Sabour, Jiaxin Wen, Minlie Huang

Abstract

Crowd-sourcing is commonly adopted for dialog data collection. However, it is highly costly and time-consuming, and the collected data is limited in scale and topic coverage. In this paper, aiming to generate emotional support conversations, we propose exploiting large-scale pre-trained language models for data augmentation, and provide key findings in our pilot exploration. Our adopted approach leverages the 6B-parameter GPT-J model and utilizes publicly available dialog posts to trigger conversations on various topics. Then we construct AugESC, a machine-augmented dataset for emotional support conversation. It is two orders of magnitude larger than the original ESConv dataset in scale, covers more diverse topics, and is shown to be of high quality by human evaluation. Lastly, we demonstrate with interactive evaluation that AugESC can further enhance dialog models tuned on ESConv to handle various conversation topics and to provide significantly more effective emotional support.

Abstract (translated)

URL

https://arxiv.org/abs/2202.13047

PDF

https://arxiv.org/pdf/2202.13047.pdf


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