Abstract
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.
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CITATION STYLE
Sato, S., Akama, R., Ouchi, H., Tokuhisa, R., Suzuki, J., & Inui, K. (2022). N-best Response-based Analysis of Contradiction-awareness in Neural Response Generation Models. In SIGDIAL 2022 - 23rd Annual Meeting of the Special Interest Group on Discourse and Dialogue, Proceedings of the Conference (pp. 637–644). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2022.sigdial-1.60
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