Beyond Fixed Morphologies: Learning Graph Policies with Trust Region Compensation in Variable Action Spaces
By: Thomas Gallien
Potential Business Impact:
Helps robots learn to move in new bodies.
Trust region-based optimization methods have become foundational reinforcement learning algorithms that offer stability and strong empirical performance in continuous control tasks. Growing interest in scalable and reusable control policies translate also in a demand for morphological generalization, the ability of control policies to cope with different kinematic structures. Graph-based policy architectures provide a natural and effective mechanism to encode such structural differences. However, while these architectures accommodate variable morphologies, the behavior of trust region methods under varying action space dimensionality remains poorly understood. To this end, we conduct a theoretical analysis of trust region-based policy optimization methods, focusing on both Trust Region Policy Optimization (TRPO) and its widely used first-order approximation, Proximal Policy Optimization (PPO). The goal is to demonstrate how varying action space dimensionality influence the optimization landscape, particularly under the constraints imposed by KL-divergence or policy clipping penalties. Complementing the theoretical insights, an empirical evaluation under morphological variation is carried out using the Gymnasium Swimmer environment. This benchmark offers a systematically controlled setting for varying the kinematic structure without altering the underlying task, making it particularly well-suited to study morphological generalization.
Similar Papers
MS-PPO: Morphological-Symmetry-Equivariant Policy for Legged Robot Locomotion
Robotics
Teaches robots to walk better and faster.
Task-Aware Morphology Optimization of Planar Manipulators via Reinforcement Learning
Robotics
Teaches robots to build themselves better.
Morphology-Aware Graph Reinforcement Learning for Tensegrity Robot Locomotion
Robotics
Makes wobbly robots walk and turn better.