Convergence theorems for inertial KM-type algorithms
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摘要
This paper deals with the convergence analysis of a general fixed point method which unifies KM-type (Krasnoselskii–Mann) iteration and inertial type extrapolation. This strategy is intended to speed up the convergence of algorithms in signal processing and image reconstruction that can be formulated as KM iterations. The convergence theorems established in this new setting improve known ones and some applications are given regarding convex feasibility problems, subgradient methods, fixed point problems and monotone inclusions.
论文关键词:47N10,47H10,65K05,Speeding up method,Common fixed point,Convex optimization,Subgradient projection,Heavy ball dynamical system,Inertial algorithm,Convex feasibility
论文评审过程:Received 23 March 2007, Revised 18 June 2007, Available online 25 July 2007.
论文官网地址:https://doi.org/10.1016/j.cam.2007.07.021