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Adaptive Sketch-and-Project Methods for Solving Linear Systems

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arxiv 1909.03604 v1 pith:AQWMUCYB submitted 2019-09-09 math.NA cs.NA

Adaptive Sketch-and-Project Methods for Solving Linear Systems

classification math.NA cs.NA
keywords samplingruleadaptivecappedlinearmax-distancemethodresidual
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present new adaptive sampling rules for the sketch-and-project method for solving linear systems. To deduce our new sampling rules, we first show how the progress of one step of the sketch-and-project method depends directly on a sketched residual. Based on this insight, we derive a 1) max-distance sampling rule, by sampling the sketch with the largest sketched residual 2) a proportional sampling rule, by sampling proportional to the sketched residual, and finally 3) a capped sampling rule. The capped sampling rule is a generalization of the recently introduced adaptive sampling rules for the Kaczmarz method. We provide a global linear convergence theorem for each sampling rule and show that the max-distance rule enjoys the fastest convergence. This finding is also verified in extensive numerical experiments that lead us to conclude that the max-distance sampling rule is superior both experimentally and theoretically to the capped sampling rule. We also provide numerical insights into implementing the adaptive strategies so that the per iteration cost is of the same order as using a fixed sampling strategy when the number of sketches times the sketch size is not significantly larger than the number of columns.

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