Convergence Rate Analysis for Averaged Fixed Point Iterations in Common Fixed Point Problems.

arXiv: Optimization and Control(2017)

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摘要
In this paper, we establish sublinear and linear convergence of fixed point iterations generated by averaged operators in a Hilbert space. Our results are achieved under a bounded Holder regularity assumption which generalizes the well-known notion of bounded linear regularity. As an application of our results, we provide a convergence rate analysis for many important iterative methods in solving broad mathematical problems such as convex feasibility problems and variational inequality problems. These include Krasnoselskii-Mann iterations, the cyclic projection algorithm, forward-backward splitting and the Douglas-Rachford feasibility algorithm along with some variants. In the important case in which the underlying sets are convex sets described by convex polynomials in a finite dimensional space, we show that the Holder regularity properties are automatically satisfied, from which sublinear convergence follows.
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关键词
averaged operator,fixed point iteration,convergence rate,Holder regularity,semi-algebraic,Douglas-Rachford algorithm
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