How can inverse reinforcement learning algorithms infer human preferences?
Inverse reinforcement learning (IRL) is a branch of machine learning that aims to learn the underlying reward function of a human or expert agent from their observed behavior. This can be useful for robotics applications, such as imitation learning, human-robot interaction, and robot adaptation. In this article, you will learn how IRL algorithms can infer human preferences and what are the main challenges and opportunities in this field.