Towards Sharp Stochastic Zeroth Order Hessian Estimators over Riemannian Manifolds
We study Hessian estimators for real-valued functions defined over an n-dimensional complete Riemannian manifold. We introduce new stochastic zeroth-order Hessian estimators using O (1) function evaluations. We show that, for a smooth real-valued function f with Lipschitz Hessian (with respect to the Rimannian metric), our estimator achieves a bias bound of order O ( L_2 δ + γδ^2 ), where L_2 is the Lipschitz constant for the Hessian, γ depends on both the Levi-Civita connection and function f, and δ is the finite difference step size. To the best of our knowledge, our results provide the first bias bound for Hessian estimators that explicitly depends on the geometry of the underlying Riemannian manifold. Perhaps more importantly, our bias bound does not increase with dimension n. This improves best previously known bias bound for O(1)-evaluation Hessian estimators, which increases quadratically with n. We also study downstream computations based on our Hessian estimators. The supremacy of our method is evidenced by empirical evaluations.
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