A unified convergence bound for conjugate gradient and accelerated gradient
Sahar Karimi, Stephen A. Vavasis

TL;DR
This paper presents a unified convergence analysis for Nesterov's accelerated gradient method and the conjugate gradient method, providing a common potential function that decreases at the optimal rate for both algorithms.
Contribution
The paper introduces a single potential-based bound that applies to both methods, offering the first direct proof of conjugate gradient's convergence rate.
Findings
Unified convergence bound for both algorithms
First direct proof of conjugate gradient's rate
Potential function decreases at optimal rate
Abstract
Nesterov's accelerated gradient method for minimizing a smooth strongly convex function is known to reduce by a factor of after iterations, where are the two parameters of smooth strong convexity. Furthermore, it is known that this is the best possible complexity in the function-gradient oracle model of computation. The method of linear conjugate gradients (CG) also satisfies the same complexity bound in the special case of strongly convex quadratic functions, but in this special case it is faster than the accelerated gradient method. Despite similarities in the algorithms and their asymptotic convergence rates, the conventional analyses of the two methods are nearly disjoint. The purpose of this note is provide a single quantity that decreases on every step at the correct rate for both algorithms. Our…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Stochastic Gradient Optimization Techniques · Advanced Optimization Algorithms Research
