Policy Gradient
Policy gradient methods are a core component of reinforcement learning, aiming to optimize policies by directly estimating the gradient of expected cumulative rewards. Current research emphasizes improving sample efficiency and addressing challenges like high-dimensional state spaces and non-convex optimization landscapes through techniques such as residual policy learning, differentiable simulation, and novel policy architectures (e.g., tree-based, low-rank matrix models). These advancements are significant for both theoretical understanding of reinforcement learning algorithms and practical applications in robotics, control systems, and other domains requiring efficient and robust decision-making under uncertainty.
Papers
On the Hidden Biases of Policy Mirror Ascent in Continuous Action Spaces
Amrit Singh Bedi, Souradip Chakraborty, Anjaly Parayil, Brian Sadler, Pratap Tokekar, Alec Koppel
Overcoming Exploration: Deep Reinforcement Learning for Continuous Control in Cluttered Environments from Temporal Logic Specifications
Mingyu Cai, Erfan Aasi, Calin Belta, Cristian-Ioan Vasile