Randomized Kaczmarz converges along small singular vectors

06/30/2020
by   Stefan Steinerberger, et al.
0

Randomized Kaczmarz is a simple iterative method for finding solutions of linear systems Ax = b. We point out that the arising sequence (x_k)_k=1^∞ tends to converge to the solution x in an interesting way: generically, as k →∞, x_k - x tends to the singular vector of A corresponding to the smallest singular value. This has interesting consequences: in particular, the error analysis of Strohmer & Vershynin is optimal. It also quantifies the `pre-convergence' phenomenon where the method initially seems to converge faster. This fact also allows for a fast computation of vectors x for which the Rayleigh quotient Ax/x is small: solve Ax = 0 via Randomized Kaczmarz.

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