Research Analyzer
← Back IROS 2024

Model-Based Policy Optimization Using Symbolic World Model

Andrey Gorodetsky, Konstantin Mironov, Aleksandr Panov

PDF

Abstract

The application of learning-based control meth- ods in robotics presents significant challenges. One is that model-free reinforcement learning algorithms use observation data with low sample efficiency. To address this challenge, a prevalent approach is model-based reinforcement learning, which involves employing an environment dynamics model. We suggest approximating transition dynamics with symbolic expressions, which are generated via symbolic regression. Ap- proximation of a mechanical system with a symbolic model has fewer parameters than approximation with neural networks, which can potentially lead to higher accuracy and quality of extrapolation. We use a symbolic dynamics model to generate trajectories in model-based policy optimization to improve the sample efficiency of the learning algorithm. We evaluate our approach across various tasks within simulated environments. Our method demonstrates superior sample efficiency in these tasks compared to model-free and model-based baseline meth- ods.

Index terms

Reinforcement Learning Machine Learning for Robot Control Model Learning for Control