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Performance of first-order methods for smooth convex minimization: a novel approach

机译:一阶方法对光滑凸极小化的性能:一种新方法

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摘要

We introduce a novel approach for analyzing the worst-case performance of first-order black-box optimization methods. We focus on smooth unconstrained convex minimization over the Euclidean space. Our approach relies on the observation that by definition, the worst-case behavior of a black-box optimization method is by itself an optimization problem, which we call the performance estimation problem (PEP). We formulate and analyze the PEP for two classes of first-order algorithms. We first apply this approach on the classical gradient method and derive a newand tight analytical bound on its performance. We then consider a broader class of first-order black-box methods, which among others, include the so-called heavy-ball method and the fast gradient schemes. We show that for this broader class, it is possible to derive new bounds on the performance of these methods by solving an adequately relaxed convex semidefinite PEP. Finally, we show an efficient procedure for finding optimal step sizes which results in a first-order black-box method that achieves best worst-case performance.
机译:我们介绍一种新颖的方法来分析一阶黑箱优化方法的最坏情况。我们专注于欧氏空间上的光滑无约束凸最小化。我们的方法依赖于这样的观察:按照定义,黑盒优化方法的最坏情况行为本身就是一个优化问题,我们称其为性能估计问题(PEP)。我们为两类一阶算法制定和分析PEP。我们首先将此方法应用于经典梯度方法,并对其性能推导出一个新的严格的分析范围。然后,我们考虑一类较广泛的一阶黑盒方法,其中包括所谓的重球法和快速梯度法。我们表明,对于更广泛的一类,可以通过解决充分松弛的凸半定PEP来推导这些方法的性能新界限。最后,我们展示了一种寻找最佳步长的有效程序,该程序可以产生一阶黑盒方法,从而获得最佳的最坏情况性能。

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