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Pretraining the Noisy Channel Model for Task-Oriented Dialogue

Qi Liu, Lei Yu, Laura Rimell, Phil Blunsom

2021Transactions of the Association for Computational Linguistics20 citationsDOIOpen Access PDF

Abstract

Abstract Direct decoding for task-oriented dialogue is known to suffer from the explaining-away effect, manifested in models that prefer short and generic responses. Here we argue for the use of Bayes’ theorem to factorize the dialogue task into two models, the distribution of the context given the response, and the prior for the response itself. This approach, an instantiation of the noisy channel model, both mitigates the explaining-away effect and allows the principled incorporation of large pretrained models for the response prior. We present extensive experiments showing that a noisy channel model decodes better responses compared to direct decoding and that a two-stage pretraining strategy, employing both open-domain and task-oriented dialogue data, improves over randomly initialized models.

Topics & Concepts

Computer scienceDecoding methodsTask (project management)Context (archaeology)DecodesChannel (broadcasting)Artificial intelligenceNatural language processingSpeech recognitionMachine learningAlgorithmComputer networkBiologyPaleontologyEconomicsManagementTopic ModelingSpeech and dialogue systemsSpeech Recognition and Synthesis