A new inertial-type hybrid projection-proximal algorithm for monotone inclusions

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摘要

This paper investigates an enhanced proximal algorithm with interesting practical features and convergence properties for solving non-smooth convex minimization problems, or approximating zeroes of maximal monotone operators, in Hilbert spaces. The considered algorithm involves a recent inertial-type extrapolation technique, the use of enlargement of operators and also a recently proposed hybrid strategy, which combines inexact computation of the proximal iteration with a projection. Compared to other existing related methods, the resulting algorithm inherits the good convergence properties of the inertial-type extrapolation and the relaxed projection strategy. It also inherits the relative error tolerance of the hybrid proximal-projection method. As a special result, an update of inexact Newton-proximal method is derived and global convergence results are established.

论文关键词:Convex minimization,Maximal monotone operator,Proximal point algorithm,Inexact computations,Inertial extrapolation,Inexact Newton method

论文评审过程:Available online 1 November 2009.

论文官网地址:https://doi.org/10.1016/j.amc.2009.10.026