Perturbed Gradient Descent Algorithms are Small-Disturbance Input-to-State Stable
Perturbed Gradient Descent Algorithms are Small-Disturbance Input-to-State Stable
This article investigates the robustness of gradient descent algorithms under perturbations. The concept of small-disturbance input-to-state stability (ISS) for discrete-time nonlinear dynamical systems is introduced, along with its Lyapunov characterization. The conventional linear Polyak-Lojasiewicz (PL) condition is then extended to a nonlinear version, and it is shown that the gradient descent algorithm is small-disturbance ISS provided the objective function satisfies the generalized nonlinear PL condition. This small-disturbance ISS property guarantees that the gradient descent algorithm converges to a small neighborhood of the optimum under sufficiently small perturbations. As a direct application of the developed framework, we demonstrate that the LQR cost satisfies the generalized nonlinear PL condition, thereby establishing that the policy gradient algorithm for LQR is small-disturbance ISS. Additionally, other popular policy gradient algorithms, including natural policy gradient and Gauss-Newton method, are also proven to be small-disturbance ISS.
Leilei Cui、Zhong-Ping Jiang、Eduardo D. Sontag、Richard D. Braatz
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Leilei Cui,Zhong-Ping Jiang,Eduardo D. Sontag,Richard D. Braatz.Perturbed Gradient Descent Algorithms are Small-Disturbance Input-to-State Stable[EB/OL].(2025-07-02)[2025-07-16].https://arxiv.org/abs/2507.02131.点此复制
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