Optimal error bounds for nonexpansive fixed-point iterations in normed spaces
Abstract
This paper investigates optimal error bounds and convergence rates for general Mann iterations for computing fixed-points of non-expansive maps. We look for iterations that achieve the smallest fixed-point residual after n steps, by minimizing a worst-case bound \|xn-Txn\| Rn derived from a nested family of optimal transport problems. We prove that this bound is tight so that minimizing Rn yields optimal iterations. Inspired from numerical results we identify iterations that attain the rate Rn=O(1/n), which we also show to be the best possible. In particular, we prove that the classical Halpern iteration achieves this optimal rate for several alternative stepsizes, and we determine analytically the optimal stepsizes that attain the smallest worst-case residuals at every step n, with a tight bound Rn≈4n+4. We also determine the optimal Halpern stepsizes for affine non-expansive maps, for which we get exactly Rn=1n+1. Finally, we show that the best rate for the classical Krasnosel'ski-Mann iteration is (1/n), and present numerical evidence suggesting that even extended variants cannot reach a faster rate.
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