English

Maximum diffusion reinforcement learning

Machine Learning 2024-05-28 v5 Statistical Mechanics Artificial Intelligence Robotics

Abstract

Robots and animals both experience the world through their bodies and senses. Their embodiment constrains their experiences, ensuring they unfold continuously in space and time. As a result, the experiences of embodied agents are intrinsically correlated. Correlations create fundamental challenges for machine learning, as most techniques rely on the assumption that data are independent and identically distributed. In reinforcement learning, where data are directly collected from an agent's sequential experiences, violations of this assumption are often unavoidable. Here, we derive a method that overcomes this issue by exploiting the statistical mechanics of ergodic processes, which we term maximum diffusion reinforcement learning. By decorrelating agent experiences, our approach provably enables single-shot learning in continuous deployments over the course of individual task attempts. Moreover, we prove our approach generalizes well-known maximum entropy techniques, and robustly exceeds state-of-the-art performance across popular benchmarks. Our results at the nexus of physics, learning, and control form a foundation for transparent and reliable decision-making in embodied reinforcement learning agents.

Keywords

Cite

@article{arxiv.2309.15293,
  title  = {Maximum diffusion reinforcement learning},
  author = {Thomas A. Berrueta and Allison Pinosky and Todd D. Murphey},
  journal= {arXiv preprint arXiv:2309.15293},
  year   = {2024}
}

Comments

The PDF file contains the collated main text and supplementary information. For supplementary movies, see https://www.youtube.com/playlist?list=PLO5AGPa3klrCTSO-t7HZsVNQinHXFQmn9

R2 v1 2026-06-28T12:33:14.638Z