N-best Response-based Analysis of Contradiction-awareness in Neural Response Generation Models
Sato, Shiki, Akama, Reina, Ouchi, Hiroki, Tokuhisa, Ryoko, Suzuki, Jun, Inui, Kentaro
–arXiv.org Artificial Intelligence
Avoiding the generation of responses that contradict the preceding context is a significant challenge in dialogue response generation. One feasible method is post-processing, such as filtering out contradicting responses from a resulting n-best response list. In this scenario, the quality of the n-best list considerably affects the occurrence of contradictions because the final response is chosen from this n-best list. This study quantitatively analyzes the contextual contradiction-awareness of neural response generation models using the consistency of the n-best lists. Particularly, we used polar questions as stimulus inputs for concise and quantitative analyses. Our tests illustrate the contradiction-awareness of recent neural response generation models and methodologies, followed by a discussion of their properties and limitations.
arXiv.org Artificial Intelligence
Aug-4-2022
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