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Training Neural Response Selection for Task-Oriented Dialogue Systems

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Despite their popularity in the chatbot literature, retrieval-based models have had modest impact on task-oriented dialogue systems, with the main obstacle to their application being the low-data regime of most task-oriented dialogue tasks. Inspired by the recent success of pretraining in language modelling, we propose an effective method for deploying response selection in task-oriented dialogue. To train response selection models for task-oriented dialogue tasks, we propose a novel method which: 1) pretrains the response selection model on large general-domain conversational corpora; and then 2) fine-tunes the pretrained model for the target dialogue domain, relying only on the small in-domain dataset to capture the nuances of the given dialogue domain. Our evaluation on six diverse application domains, ranging from e-commerce to banking, demonstrates the effectiveness of the proposed training method.

Matthew Henderson, Ivan Vuli\'c, Daniela Gerz, I\~nigo Casanueva, Pawe{\l} Budzianowski, Sam Coope, Georgios Spithourakis, Tsung-Hsien Wen, Nikola Mrk\v{s}i\'c, Pei-Hao Su• 2019

Related benchmarks

TaskDatasetResultRank
Response SelectionReddit (test)
R@1 (R100)61.3
7
Response SelectionAmazonQA (test)
R@1 (K=100)71.3
6
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