SMRT Chatbots: Improving Non-task-oriented Dialog With Simulated Multiple Reference Training · The Large Language Model Bible Contribute to LLM-Bible

SMRT Chatbots: Improving Non-task-oriented Dialog With Simulated Multiple Reference Training

Khayrallah Huda, Sedoc João. Arxiv 2020

[Paper]    
Model Architecture Pretraining Methods Prompting Training Techniques Transformer

Non-task-oriented dialog models suffer from poor quality and non-diverse responses. To overcome limited conversational data, we apply Simulated Multiple Reference Training (SMRT; Khayrallah et al., 2020), and use a paraphraser to simulate multiple responses per training prompt. We find SMRT improves over a strong Transformer baseline as measured by human and automatic quality scores and lexical diversity. We also find SMRT is comparable to pretraining in human evaluation quality, and outperforms pretraining on automatic quality and lexical diversity, without requiring related-domain dialog data.

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