Anytime Acceleration of Gradient Descent

Abstract

This work investigates stepsize-based acceleration of gradient descent with anytime convergence guarantees. For smooth (non-strongly) convex optimization, we propose a stepsize schedule that allows gradient descent to achieve convergence guarantees of O(T-1.119) for any stopping time T, where the stepsize schedule is predetermined without prior knowledge of the stopping time. This result provides an affirmative answer to a COLT open problem kornowski2024open regarding whether stepsize-based acceleration can yield anytime convergence rates of o(T-1). We further extend our theory to yield anytime convergence guarantees of (-(T/0.893)) for smooth and strongly convex optimization, with being the condition number.

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