首页> 外文期刊>SIAM Journal on Optimization: A Publication of the Society for Industrial and Applied Mathematics >UNIFYING ABSTRACT INEXACT CONVERGENCE THEOREMS AND BLOCK COORDINATE VARIABLE METRIC IPIANO
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UNIFYING ABSTRACT INEXACT CONVERGENCE THEOREMS AND BLOCK COORDINATE VARIABLE METRIC IPIANO

机译:统一抽象不精确融合定理和块坐标可变度量IPIANO

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摘要

An abstract convergence theorem for a class of generalized descent methods that explicitly models relative errors is proved. The convergence theorem generalizes and unifies several recent abstract convergence theorems. It is applicable to possibly nonsmooth and nonconvex lower semicontinuous functions that satisfy the Kurdyka-Lojasiewicz (KL) inequality, which comprises a huge class of problems. Many of the recent algorithms that explicitly prove convergence using the KL inequality can be cast in the abstract framework of this paper and, therefore, the generated sequence converges to a stationary point of the objective function. Additional flexibility compared to related approaches is gained by a descent property that is formulated with respect to a function that is allowed to change along the iterations, a generic distance measure, and an explicit/implicit relative error condition with respect to finite linear combinations of distance terms. As an application of the gained flexibility, the convergence of a block coordinate variable metric version of iPiano (an inertial forward-backward splitting algorithm) is proved, which performs favorably on an inpainting problem with a Mumford-Shah-like regularization from image processing.
机译:证明了一类明确模型相对错误的一类广义血统方法的摘要定理。收敛定理概括并统一了最近的几个抽象融合定理。它适用于可能的非光滑和非凸起的下半连续功能,满足Kurdyka-Lojasiewicz(KL)不等式,包括大量问题。许多最近使用KL不等式显式证明收敛的算法中的许多算法可以在本文的抽象框架中施放,因此,所生成的序列会聚到目标函数的静止点。与相关方法相比的额外灵活性通过关于允许沿迭代,通用距离测量和明确/隐含的相对误差条件而被允许改变的函数的阶段特征来获得阶段,并且相对于距离的有限线性组合条款。作为所获得的灵活性的应用,证明了IPiano(惯性前向后分裂算法)的块坐标可变度量版本的汇聚,这对来自图像处理的Mumford-Shah的正则化的普遍问题有利地执行。

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