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Main Author: Bello-Cruz, Yunier
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.21132
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author Bello-Cruz, Yunier
author_facet Bello-Cruz, Yunier
contents The Method of Ellipcenters (ME), introduced in~\cite{ME2025} for strongly convex quadratic minimization, uses two gradient evaluations per iteration: one at the current iterate and one at a companion point on the same level set. We extend ME to the broader class of strongly convex functions with Lipschitz continuous gradient, and prove that ME matches the convergence rate of gradient descent with exact line search on this class. When the two gradient directions are linearly independent, a midpoint argument exploiting the level-set symmetry yields a further per-step improvement, which is global when the angle between the two gradients is uniformly bounded away from zero. ME also converges in at most two steps in dimension two. Numerical experiments on regularized logistic regression confirm the theoretical predictions.
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spellingShingle The Method of Ellipcenters for Strongly Convex Functions
Bello-Cruz, Yunier
Optimization and Control
The Method of Ellipcenters (ME), introduced in~\cite{ME2025} for strongly convex quadratic minimization, uses two gradient evaluations per iteration: one at the current iterate and one at a companion point on the same level set. We extend ME to the broader class of strongly convex functions with Lipschitz continuous gradient, and prove that ME matches the convergence rate of gradient descent with exact line search on this class. When the two gradient directions are linearly independent, a midpoint argument exploiting the level-set symmetry yields a further per-step improvement, which is global when the angle between the two gradients is uniformly bounded away from zero. ME also converges in at most two steps in dimension two. Numerical experiments on regularized logistic regression confirm the theoretical predictions.
title The Method of Ellipcenters for Strongly Convex Functions
topic Optimization and Control
url https://arxiv.org/abs/2604.21132