Zero-shot dialog generation with cross-domain latent actions

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Abstract

This paper introduces zero-shot dialog generation (ZSDG), as a step towards neural dialog systems that can instantly generalize to new situations with minimal data. ZSDG enables an end-to-end generative dialog system to generalize to a new domain for which only a domain description is provided and no training dialogs are available. Then a novel learning framework, Action Matching, is proposed. This algorithm can learn a cross-domain embedding space that models the semantics of dialog responses which, in turn, lets a neural dialog generation model generalize to new domains. We evaluate our methods on a new synthetic dialog dataset, and an existing human-human dialog dataset. Results show that our method has superior performance in learning dialog models that rapidly adapt their behavior to new domains and suggests promising future research.1

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APA

Zhao, T., & Eskenazi, M. (2018). Zero-shot dialog generation with cross-domain latent actions. In SIGDIAL 2018 - 19th Annual Meeting of the Special Interest Group on Discourse and Dialogue - Proceedings of the Conference (pp. 1–10). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/w18-5001

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