On convergence rates of adaptive ensemble Kalman inversion for linear ill-posed problems

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Abstract

In this paper we discuss a deterministic form of ensemble Kalman inversion as a regularization method for linear inverse problems. By interpreting ensemble Kalman inversion as a low-rank approximation of Tikhonov regularization, we are able to introduce a new sampling scheme based on the Nyström method that improves practical performance. Furthermore, we formulate an adaptive version of ensemble Kalman inversion where the sample size is coupled with the regularization parameter. We prove that the proposed scheme yields an order optimal regularization method under standard assumptions if the discrepancy principle is used as a stopping criterion. The paper concludes with a numerical comparison of the discussed methods for an inverse problem of the Radon transform.

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APA

Parzer, F., & Scherzer, O. (2022). On convergence rates of adaptive ensemble Kalman inversion for linear ill-posed problems. Numerische Mathematik, 152(2), 371–409. https://doi.org/10.1007/s00211-022-01314-y

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