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Restricted strong convexity and its applications to convergence analysis of gradient-type methods in convex optimization

机译:受限强凸性及其在凸优化中梯度型方法收敛性分析中的应用

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A great deal of interest of solving large-scale convex optimization problems has, recently, turned to gradient method and its variants. To ensure rates of linear convergence, current theory regularly assumes that the objective functions are strongly convex. This paper goes beyond the traditional wisdom by studying a strictly weaker concept than the strong convexity, named restricted strongly convexity which was recently proposed and can be satisfied by a much broader class of functions. Utilizing the restricted strong convexity, we derive rates of linear convergence for (in)exact gradient-type methods. Besides, we obtain two by-products: (1) we rederive rates of linear convergence of inexact gradient method for a class of structured smooth convex optimizations; (2) we improve the rate of linear convergence for the linearized Bregman algorithm.
机译:最近,解决大规模凸优化问题的兴趣很大,已转向梯度方法及其变体。为了确保线性收敛的速率,当前理论经常假设目标函数是强凸的。本文通过研究比强凸性严格弱的概念(称为受限强凸性)超越了传统观点,近来提出了这种概念,可以通过更广泛的功能类别来满足。利用有限的强凸性,我们得出(精确)精确梯度类型方法的线性收敛速率。此外,我们获得了两个副产品:(1)对于一类结构化光滑凸优化,我们使用不精确梯度方法的线性收敛率; (2)我们提高了线性化Bregman算法的线性收敛速度。

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