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New Approach in Human-AI Interaction by Reinforcement-Imitation Learning
by
Landry, Rene
, Navidi, Neda
in
Algorithms
/ Behavior
/ Distance learning
/ human–AI collaboration
/ imitation learning
/ reinforcement learning
2021
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New Approach in Human-AI Interaction by Reinforcement-Imitation Learning
by
Landry, Rene
, Navidi, Neda
in
Algorithms
/ Behavior
/ Distance learning
/ human–AI collaboration
/ imitation learning
/ reinforcement learning
2021
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New Approach in Human-AI Interaction by Reinforcement-Imitation Learning
Journal Article
New Approach in Human-AI Interaction by Reinforcement-Imitation Learning
2021
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Overview
Reinforcement Learning (RL) provides effective results with an agent learning from a stand-alone reward function. However, it presents unique challenges with large amounts of environment states and action spaces, as well as in the determination of rewards. Imitation Learning (IL) offers a promising solution for those challenges using a teacher. In IL, the learning process can take advantage of human-sourced assistance and/or control over the agent and environment. A human teacher and an agent learner are considered in this study. The teacher takes part in the agent’s training towards dealing with the environment, tackling a specific objective, and achieving a predefined goal. This paper proposes a novel approach combining IL with different types of RL methods, namely, state-action-reward-state-action (SARSA) and Asynchronous Advantage Actor–Critic Agents (A3C), to overcome the problems of both stand-alone systems. How to effectively leverage the teacher’s feedback—be it direct binary or indirect detailed—for the agent learner to learn sequential decision-making policies is addressed. The results of this study on various OpenAI-Gym environments show that this algorithmic method can be incorporated with different combinations, and significantly decreases both human endeavors and tedious exploration process.
Publisher
MDPI AG
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