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A Large Collection of Model-generated Contradictory Responses for Consistency-aware Dialogue Systems (2403.12500v1)

Published 19 Mar 2024 in cs.CL

Abstract: Mitigating the generation of contradictory responses poses a substantial challenge in dialogue response generation. The quality and quantity of available contradictory response data play a vital role in suppressing these contradictions, offering two significant benefits. First, having access to large contradiction data enables a comprehensive examination of their characteristics. Second, data-driven methods to mitigate contradictions may be enhanced with large-scale contradiction data for training. Nevertheless, no attempt has been made to build an extensive collection of model-generated contradictory responses. In this paper, we build a large dataset of response generation models' contradictions for the first time. Then, we acquire valuable insights into the characteristics of model-generated contradictions through an extensive analysis of the collected responses. Lastly, we also demonstrate how this dataset substantially enhances the performance of data-driven contradiction suppression methods.

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Authors (4)
  1. Shiki Sato (7 papers)
  2. Reina Akama (10 papers)
  3. Jun Suzuki (86 papers)
  4. Kentaro Inui (119 papers)

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