Stackelberg Actor-Critic: Game-Theoretic Reinforcement Learning Algorithms

Authors

  • Liyuan Zheng University of Washington
  • Tanner Fiez University of Washington
  • Zane Alumbaugh University of California, Santa Cruz
  • Benjamin Chasnov University of Washington
  • Lillian J. Ratliff University of Washington

DOI:

https://doi.org/10.1609/aaai.v36i8.20908

Keywords:

Machine Learning (ML)

Abstract

The hierarchical interaction between the actor and critic in actor-critic based reinforcement learning algorithms naturally lends itself to a game-theoretic interpretation. We adopt this viewpoint and model the actor and critic interaction as a two-player general-sum game with a leader-follower structure known as a Stackelberg game. Given this abstraction, we propose a meta-framework for Stackelberg actor-critic algorithms where the leader player follows the total derivative of its objective instead of the usual individual gradient. From a theoretical standpoint, we develop a policy gradient theorem for the refined update and provide a local convergence guarantee for the Stackelberg actor-critic algorithms to a local Stackelberg equilibrium. From an empirical standpoint, we demonstrate via simple examples that the learning dynamics we study mitigate cycling and accelerate convergence compared to the usual gradient dynamics given cost structures induced by actor-critic formulations. Finally, extensive experiments on OpenAI gym environments show that Stackelberg actor-critic algorithms always perform at least as well and often significantly outperform the standard actor-critic algorithm counterparts.

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Published

2022-06-28

How to Cite

Zheng, L., Fiez, T., Alumbaugh, Z., Chasnov, B., & Ratliff, L. J. (2022). Stackelberg Actor-Critic: Game-Theoretic Reinforcement Learning Algorithms. Proceedings of the AAAI Conference on Artificial Intelligence, 36(8), 9217–9224. https://doi.org/10.1609/aaai.v36i8.20908

Issue

Section

AAAI Technical Track on Machine Learning III