Publication: Batch recurrent Q-Learning for backchannel generation towards engaging agents
Program
KU Authors
Co-Authors
N/A
Advisor
Publication Date
2019
Language
English
Type
Conference proceeding
Journal Title
Journal ISSN
Volume Title
Abstract
The ability to generate appropriate verbal and nonverbal backchannels by an agent during human-robot interaction greatly enhances the interaction experience. Backchannels are particularly important in applications like tutoring and counseling, which require constant attention and engagement of the user. We present here a method for training a robot for backchannel generation during a human-robot interaction within the reinforcement learning (RL) framework, with the goal of maintaining high engagement level. Since online learning by interaction with a human is highly time-consuming and impractical, we take advantage of the recorded human-to-human dataset and approach our problem as a batch reinforcement learning problem. The dataset is utilized as a batch data acquired by some behavior policy. We perform experiments with laughs as a backchannel and train an agent with value-based techniques. In particular, we demonstrate the effectiveness of recurrent layers in the approximate value function for this problem, that boosts the performance in partially observable environments. With off-policy policy evaluation, it is shown that the RL agents are expected to produce more engagement than an agent trained from imitation learning.
Description
Source:
2019 8th International Conference on Affective Computing and Intelligent Interaction, ACII 2019
Publisher:
Institute of Electrical and Electronics Engineers (IEEE)
Keywords:
Subject
Computer science, Artificial intelligence, Information systems, Engineering, Electrical and electronic engineering