Proximal Algorithms

Neal Parikh, Stephen P. Boyd
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引用次数: 3752

Abstract

This monograph is about a class of optimization algorithms called proximal algorithms. Much like Newton's method is a standard tool for solving unconstrained smooth optimization problems of modest size, proximal algorithms can be viewed as an analogous tool for nonsmooth, constrained, large-scale, or distributed versions of these problems. They are very generally applicable, but are especially well-suited to problems of substantial recent interest involving large or high-dimensional datasets. Proximal methods sit at a higher level of abstraction than classical algorithms like Newton's method: the base operation is evaluating the proximal operator of a function, which itself involves solving a small convex optimization problem. These subproblems, which generalize the problem of projecting a point onto a convex set, often admit closed-form solutions or can be solved very quickly with standard or simple specialized methods. Here, we discuss the many different interpretations of proximal operators and algorithms, describe their connections to many other topics in optimization and applied mathematics, survey some popular algorithms, and provide a large number of examples of proximal operators that commonly arise in practice.
近端算法
这本专著是关于一类被称为近端算法的优化算法。就像牛顿方法是解决中等规模的无约束平滑优化问题的标准工具一样,近端算法可以被视为解决这些问题的非光滑、约束、大规模或分布式版本的类似工具。它们非常普遍适用,但特别适合于涉及大型或高维数据集的近期重大问题。与牛顿方法等经典算法相比,近端方法处于更高的抽象层次:基本操作是计算函数的近端算子,它本身涉及解决一个小的凸优化问题。这些子问题是将一个点投射到凸集上的问题进行推广的问题,通常具有封闭形式的解,或者可以用标准或简单的专门方法非常快速地解决。在这里,我们讨论了近端算子和算法的许多不同的解释,描述了它们与优化和应用数学中许多其他主题的联系,调查了一些流行的算法,并提供了在实践中经常出现的近端算子的大量例子。
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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