Consistency is one of the major challenges faced by dialogue agents. A human-like dialogue agent should not only respond naturally, but also maintain a consistent persona. In this paper, we exploit the advantages of natural language inference (NLI) technique to address the issue of generating persona consistent dialogues. Different from existing work that re-ranks the retrieved responses through an NLI model, we cast the task as a reinforcement learning problem and propose to exploit the NLI signals from response-persona pairs as rewards for the process of dialogue generation. Specifically, our generator employs an attention-based encoder-decoder to generate persona-based responses. Our evaluator consists of two components: an adversarially trained naturalness module and an NLI based consistency module. Moreover, we use another well-performed NLI model in the evaluation of persona-consistency. Experimental results on both human and automatic metrics, including the model-based consistency evaluation, demonstrate that the proposed approach outperforms strong generative baselines, especially in the persona-consistency of generated responses.
Generating Persona Consistent Dialogues by Exploiting Natural Language Inference
A reinforcement learning-based dialogue agent uses NLI signals to generate and evaluate consistent and natural responses.
- Year
- 2019
- Venue
- arXiv 2019
- Authors
- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/1911.05889v4ARXIV-DEFAULT
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