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An abstract proximal point algorithm

机译:抽象的近端点算法

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The proximal point algorithm is a widely used tool for solving a variety of convex optimization problems such as finding zeros of maximally monotone operators, fixed points of nonexpansive mappings, as well as minimizing convex functions. The algorithm works by applying successively so-called resolvent mappings associated to the original object that one aims to optimize. In this paper we abstract from the corresponding resolvents employed in these problems the natural notion of jointly firmly nonexpansive families of mappings. This leads to a streamlined method of proving weak convergence of this class of algorithms in the context of complete CAT(0) spaces (and hence also in Hilbert spaces). In addition, we consider the notion of uniform firm nonexpansivity in order to similarly provide a unified presentation of a case where the algorithm converges strongly. Methods which stem from proof mining, an applied subfield of logic, yield in this situation computable and low-complexity rates of convergence.
机译:近端点算法是一种广泛使用的工具,用于解决各种凸优化问题,例如找到最大单调算子的零点,非膨胀映射的固定点以及最小化凸函数。该算法通过连续地应用与一个对象要优化的原始对象相关的所谓的解析映射来工作。在本文中,我们从在这些问题中使用的对应解决方案中,抽象出了联合牢固地不可扩张的映射族的自然概念。这导致了一种证明在完整的CAT(0)空间(因此也在希尔伯特空间)中此类算法的弱收敛的简化方法。另外,我们考虑统一公司不可扩张性的概念,以便类似地提供算法强烈收敛情况的统一表示。在这种情况下,源于证明挖掘的方法(一种适用的逻辑子域)可产生可计算的且复杂度低的收敛速度。

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