非凸问题的延迟导数分布随机惯性加速方法

Yangyang Xu, Yibo Xu, Yonggui Yan, Jiewei Chen
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引用次数: 3

摘要

随机梯度法(SGMs)是解决随机优化问题的主要方法。在光滑非凸问题上,一些加速技术被应用于提高SGMs的收敛速度。然而,将一定的加速技术应用于求解非光滑非凸问题的随机次梯度法(SsGM)方面的探索很少。此外,很少有人努力分析具有延迟衍生品的(加速)SsGM。信息延迟自然发生在分布式系统中,计算工作者之间不相互协调。本文提出了一种求解非光滑非凸随机优化问题的惯性近端SsGM。在分布式环境下,即使存在延迟导数信息,该方法也能保证收敛性。建立了3类非凸问题的收敛速率结果:带凸正则化器的弱凸非光滑问题、带非光滑凸正则化器的复合非凸问题和光滑非凸问题。对于每个问题类,对于$K$迭代,梯度范数平方的期望值的收敛速率为$O(1/K^{\frac{1}{2}})$。在分布式环境下,该方法的收敛速度会受到信息延迟的影响。然而,慢下来的效果将随着后两个问题类的迭代次数而衰减。我们在三个应用中对所提出的方法进行了测试。数值结果清楚地表明了使用基于惯性的加速度的优点。此外,我们观察到异步更新比同步更新的并行化速度更快,尽管前者使用延迟导数。我们的源代码发布在https://github.com/RPI-OPT/Inertial-SsGM
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed Stochastic Inertial-Accelerated Methods with Delayed Derivatives for Nonconvex Problems
Stochastic gradient methods (SGMs) are predominant approaches for solving stochastic optimization. On smooth nonconvex problems, a few acceleration techniques have been applied to improve the convergence rate of SGMs. However, little exploration has been made on applying a certain acceleration technique to a stochastic subgradient method (SsGM) for nonsmooth nonconvex problems. In addition, few efforts have been made to analyze an (accelerated) SsGM with delayed derivatives. The information delay naturally happens in a distributed system, where computing workers do not coordinate with each other. In this paper, we propose an inertial proximal SsGM for solving nonsmooth nonconvex stochastic optimization problems. The proposed method can have guaranteed convergence even with delayed derivative information in a distributed environment. Convergence rate results are established to three classes of nonconvex problems: weakly-convex nonsmooth problems with a convex regularizer, composite nonconvex problems with a nonsmooth convex regularizer, and smooth nonconvex problems. For each problem class, the convergence rate is $O(1/K^{\frac{1}{2}})$ in the expected value of the gradient norm square, for $K$ iterations. In a distributed environment, the convergence rate of the proposed method will be slowed down by the information delay. Nevertheless, the slow-down effect will decay with the number of iterations for the latter two problem classes. We test the proposed method on three applications. The numerical results clearly demonstrate the advantages of using the inertial-based acceleration. Furthermore, we observe higher parallelization speed-up in asynchronous updates over the synchronous counterpart, though the former uses delayed derivatives. Our source code is released at https://github.com/RPI-OPT/Inertial-SsGM
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