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An Adaptive and Parameter-Free Nesterov's Accelerated Gradient Method for Convex Optimization

Published 16 May 2025 in math.OC | (2505.11670v1)

Abstract: We propose AdaNAG, an adaptive accelerated gradient method based on Nesterov's accelerated gradient method. AdaNAG is line-search-free, parameter-free, and achieves the accelerated convergence rates $f(x_k) - f_\star = \mathcal{O}\left(1/k2\right)$ and $\min_{i\in\left{1,\dots, k\right}} |\nabla f(x_i)|2 = \mathcal{O}\left(1/k3\right)$ for $L$-smooth convex function $f$. We provide a Lyapunov analysis for the convergence proof of AdaNAG, which additionally enables us to propose a novel adaptive gradient descent (GD) method, AdaGD. AdaGD achieves the non-ergodic convergence rate $f(x_k) - f_\star = \mathcal{O}\left(1/k\right)$, like the original GD. The analysis of AdaGD also motivated us to propose a generalized AdaNAG that includes practically useful variants of AdaNAG. Numerical results demonstrate that our methods outperform some other recent adaptive methods for representative applications.

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