
Recent random block-coordinate fixed point algorithms are particularly well suited to large-scale optimization in signal and image processing. These algorithms feature random sweeping rules to select arbitrarily the blocks of variables that are activated over the course of the iterations and they allow for stochastic errors in the evaluation of the operators. The present paper provides new linear convergence results. These convergence rates are compared to those of standard deter-ministic algorithms both theoretically and experimentally in an image recovery problem.
[SPI.AUTO] Engineering Sciences [physics]/Automatic, fixed-point algorithm, linear convergence, stochastic algorithm, [MATH.MATH-OC] Mathematics [math]/Optimization and Control [math.OC], Block-coordinate algorithm
[SPI.AUTO] Engineering Sciences [physics]/Automatic, fixed-point algorithm, linear convergence, stochastic algorithm, [MATH.MATH-OC] Mathematics [math]/Optimization and Control [math.OC], Block-coordinate algorithm
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