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Global Convergence of Policy Gradient Methods for ReLU Controllers in Linear Quadratic Regulation

Jhojan A. Rodriguez-Gil, César A. Uribe

Year
2026
Access
Open access

Abstract

We study the convergence of model-based policy gradient for the deterministic, scalar, discounted linear-quadratic regulator when the controller is an overparameterized one-hidden-layer ReLU network without biases. Although the optimal LQR controller is linear, neural parameterization creates a redundant nonconvex weight space with a possibly asymmetric piecewise-linear controller. We show that this structure can still be analyzed exactly through the two effective gains induced on the positive and negative half-lines. Under suitable random initialization, sufficient width, and a small step size, the model-based policy gradient remains stable, decreases the cost geometrically, and drives the effective gains to the unique optimal scalar LQR gain with high probability.

Keywords

math.OCeess.SY

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