Adversarial Advantage Actor-Critic Model for Task-Completion Dialogue Policy Learning
- Baolin Peng ,
- Xiujun Li ,
- Jianfeng Gao ,
- JJ (Jingjing) Liu ,
- Yun-Nung Chen ,
- Kam-Fai Wong
ICASSP 2018 |
Published by arXiv
This paper presents a new method — adversarial advantage actor-critic (Adversarial A2C), which significantly improves the efficiency of dialogue policy learning in task-completion dialogue systems. Inspired by generative adversarial networks (GAN), we train a discriminator to differentiate responses/actions generated by dialogue agents from responses/actions by experts. Then, we incorporate the discriminator as another critic into the advantage actor-critic (A2C) framework, to encourage the dialogue agent to explore state-action within the regions where the agent takes actions similar to those of the experts. Experimental results in a movie-ticket booking domain show that the proposed Adversarial A2C can accelerate policy exploration efficiently.