On the Sample Complexity of Imitation Learning for Smoothed Model Predictive Control

Abstract

Recent work in imitation learning has shown that having an expert controller that is both suitably smooth and stable enables stronger guarantees on the performance of the learned controller. However, constructing such smoothed expert controllers for arbitrary systems remains challenging, especially in the presence of input and state constraints. We show how such a smoothed expert can be designed for a general class of systems using a log-barrier-based relaxation of a standard Model Predictive Control (MPC) optimization problem.

Publication
IEEE 63rd Conference on Decision and Control (CDC 2024)
Zak Mhammedi
Zak Mhammedi
Research Scientist

I work on the theoretical foundations of Reinforcement Learning, Controls, and Optimization.