Proceedings of the 24th Meeting of the Special Interest Group on Discourse and Dialogue 2023
DOI: 10.18653/v1/2023.sigdial-1.24
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DiactTOD: Learning Generalizable Latent Dialogue Acts for Controllable Task-Oriented Dialogue Systems

Qingyang Wu,
James Gung,
Raphael Shu
et al.

Abstract: Dialogue act annotations are important to improve response generation quality in taskoriented dialogue systems. However, it can be challenging to use dialogue acts to control response generation in a generalizable way because different datasets and tasks may have incompatible annotations. While alternative methods that utilize latent action spaces or reinforcement learning do not require explicit annotations, they may lack interpretability or face difficulties defining task-specific rewards. In this work, we p… Show more

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