Meta-Inverse Reinforcement Learning for Mean Field Games via Probabilistic Context Variables
By: Yang Chen , Xiao Lin , Bo Yan and more
Potential Business Impact:
Teaches computers to learn from different examples.
Designing suitable reward functions for numerous interacting intelligent agents is challenging in real-world applications. Inverse reinforcement learning (IRL) in mean field games (MFGs) offers a practical framework to infer reward functions from expert demonstrations. While promising, the assumption of agent homogeneity limits the capability of existing methods to handle demonstrations with heterogeneous and unknown objectives, which are common in practice. To this end, we propose a deep latent variable MFG model and an associated IRL method. Critically, our method can infer rewards from different yet structurally similar tasks without prior knowledge about underlying contexts or modifying the MFG model itself. Our experiments, conducted on simulated scenarios and a real-world spatial taxi-ride pricing problem, demonstrate the superiority of our approach over state-of-the-art IRL methods in MFGs.
Similar Papers
Solving Continuous Mean Field Games: Deep Reinforcement Learning for Non-Stationary Dynamics
Machine Learning (CS)
Teaches many robots to work together smartly.
Distributional Inverse Reinforcement Learning
Machine Learning (CS)
Learns how to do things by watching experts.
Symmetry-Guided Multi-Agent Inverse Reinforcement Learnin
Robotics
Robots learn better with less practice.