Applied Sciences (Dec 2022)

Intent Classification and Slot Filling Model for In-Vehicle Services in Korean

  • Jungwoo Lim,
  • Suhyune Son,
  • Songeun Lee,
  • Changwoo Chun,
  • Sungsoo Park,
  • Yuna Hur,
  • Heuiseok Lim

DOI
https://doi.org/10.3390/app122312438
Journal volume & issue
Vol. 12, no. 23
p. 12438

Abstract

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Since understanding a user’s request has become a critical task for the artificial intelligence speakers, capturing intents and finding correct slots along with corresponding slot value is significant. Despite various studies concentrating on a real-life situation, dialogue system that is adaptive to in-vehicle services are limited. Moreover, the Korean dialogue system specialized in an vehicle domain rarely exists. We propose a dialogue system that captures proper intent and activated slots for Korean in-vehicle services in a multi-tasking manner. We implement our model with a pre-trained language model, and it includes an intent classifier, slot classifier, slot value predictor, and value-refiner. We conduct the experiments on the Korean in-vehicle services dataset and show 90.74% of joint goal accuracy. Also, we analyze the efficacy of each component of our model and inspect the prediction results with qualitative analysis.

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