Convergence of Flow-Policy Gradient Learning for Linear Quadratic Regulator Problems
Abstract
Flow Q-learning has recently been introduced to integrate learning from expert demonstrations into an actor-critic structure. Central to this innovation is the ``the one-step policy'' network, which is optimized through a Q-function that is regularized with the behavioral cloning from expert trajectories, allowing learning more expressive policies using flow-based generative models. In this paper, we studied the convergence property and stabilizablity of the one-step policy during learning for linear quadratic problems under the offline settings. Our theoretical results are based on a new formulation of the one-step policy loss based on the average expected cost, and regularized with the behavioral cloning loss. Such a formulation allows us to tap into existing strong theoretical results from the policy gradient theorem to study the convergence properties of the one-step policy. We verify our theoretical finding with simulation results on a linearized inverted pendulum.
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