Nonlinear Acceleration of Constrained Optimization Algorithms

Vien V. Mai, M. Johansson
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引用次数: 9

Abstract

This paper introduces a novel technique for nonlinear acceleration of first-order methods for constrained convex optimization. Previous studies of nonlinear acceleration have only been able to provide convergence guarantees for unconstrained convex optimization. In contrast, our method is able to avoid infeasibility of the accelerated iterates and retains the theoretical performance guarantees of the unconstrained case. We focus on Anderson acceleration of the classical projected gradient descent (PGD) method, but our techniques can easily be extended to more sophisticated algorithms, such as mirror descent. Due to the presence of a constraint set, the relevant fixed-point mapping for PGD is not differentiable. However, we show that the convergence results for Anderson acceleration of smooth fixed-point iterations can be extended to the non-smooth case under certain technical conditions.
约束优化算法的非线性加速
本文介绍了一阶约束凸优化方法的非线性加速新技术。以往的非线性加速度研究只能为无约束凸优化提供收敛性保证。相比之下,我们的方法能够避免加速迭代的不可行性,并保留了无约束情况下的理论性能保证。我们专注于经典的投影梯度下降(PGD)方法的安德森加速,但我们的技术可以很容易地扩展到更复杂的算法,如镜像下降。由于约束集的存在,PGD的不动点映射是不可微的。然而,我们证明了光滑不动点迭代的Anderson加速的收敛性结果在一定的技术条件下可以推广到非光滑情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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