A methodology for turn-taking capabilities enhancement in Spoken Dialogue Systems using Reinforcement Learning

  • Hatim Khouzaimi ,
  • Romain Laroche ,
  • Fabrice Lefèvre

Computer Speech & Language | , Vol 47: pp. 93-111

论文与出版物 | 论文与出版物

This article introduces a new methodology to enhance an existing traditional Spoken Dialogue System (SDS) with optimal turn-taking capabilities in order to increase dialogue efficiency. A new approach for transforming the traditional dialogue architecture into an incremental one at a low cost is presented: a new turn-taking decision module called the Scheduler is inserted between the Client and the Service. It is responsible for handling turn-taking decisions. Then, a User Simulator which is able to interact with the system using this new architecture has been implemented and used to train a new Reinforcement Learning turn-taking strategy. Compared to a non-incremental and a handcrafted incremental baselines, it is shown to perform better in simulation and in a real live experiment.