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MePoly: Max Entropy Polynomial Policy Optimization

Machine Learning 2026-02-23 v1 Robotics

Abstract

Stochastic Optimal Control provides a unified mathematical framework for solving complex decision-making problems, encompassing paradigms such as maximum entropy reinforcement learning(RL) and imitation learning(IL). However, conventional parametric policies often struggle to represent the multi-modality of the solutions. Though diffusion-based policies are aimed at recovering the multi-modality, they lack an explicit probability density, which complicates policy-gradient optimization. To bridge this gap, we propose MePoly, a novel policy parameterization based on polynomial energy-based models. MePoly provides an explicit, tractable probability density, enabling exact entropy maximization. Theoretically, we ground our method in the classical moment problem, leveraging the universal approximation capabilities for arbitrary distributions. Empirically, we demonstrate that MePoly effectively captures complex non-convex manifolds and outperforms baselines in performance across diverse benchmarks.

Keywords

Cite

@article{arxiv.2602.17832,
  title  = {MePoly: Max Entropy Polynomial Policy Optimization},
  author = {Hang Liu and Sangli Teng and Maani Ghaffari},
  journal= {arXiv preprint arXiv:2602.17832},
  year   = {2026}
}
R2 v1 2026-07-01T10:43:37.490Z