Task-oriented dialogue systems in industry settings need to have high conversational capability, be easily adaptable to changing situations and conform to business constraints. This paper describes a 3-step procedure to develop a conversational model that satisfies these criteria and can efficiently scale to rank a large set of response candidates. First, we provide a simple algorithm to semi-automatically create a high-coverage template set from historic conversations without any annotation. Second, we propose a neural architecture that encodes the dialogue context and applicable business constraints as profile features for ranking the next turn. Third, we describe a two-stage learning strategy with self-supervised training, followed by supervised fine-tuning on limited data collected through a human-in-the-loop platform. Finally, we describe offline experiments and present results of deploying our model with human-in-the-loop to converse with live customers online.
CITATION STYLE
Poddar, L., Szarvas, G., Wang, C., Balazs, J., Danchenko, P., & Ernst, P. (2022). Deploying a Retrieval based Response Model for Task Oriented Dialogues. In EMNLP 2022 - Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing: Industry Track (pp. 179–188). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2022.emnlp-industry.17
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