Abstract
Conversational recommendation has recently attracted significant attention. As systems must understand users’ preferences, training them has called for conversational corpora, typically derived from task-oriented conversations. We observe that such corpora often do not reflect how people naturally describe preferences. We present a new approach to obtaining user preferences in dialogue: Coached Conversational Preference Elicitation. It allows collection of natural yet structured conversational preferences. Studying the dialogues in one domain, we present a brief quantitative analysis of how people describe movie preferences at scale. Demonstrating the methodology, we release the CCPE-M dataset to the community with over 500 movie preference dialogues expressing over 10,000 preferences.1
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CITATION STYLE
Radlinski, F., Balog, K., Byrne, B., & Krishnamoorthi, K. (2019). Coached conversational preference elicitation: A case study in understanding movie preferences. In SIGDIAL 2019 - 20th Annual Meeting of the Special Interest Group Discourse Dialogue - Proceedings of the Conference (pp. 353–360). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/W19-5941
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