ditlab system for Dialogue Robot Competition 2022

10/13/2022
by   Yuuki Tachioka, et al.
0

We developed a dialogue system for Dialogue Robot Competition 2022. Our system is composed of three parts. First part investigates participants' demographic information by rule-based interview. Second part recommends a point of interest (POI) based on the collected demographic information. Third part answers participants' question based on the combination of rule-based answering and deep-learning-based answering with nearby POI search.

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