2023
DOI: 10.1137/21m1442942
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Convergence Rates for Learning Linear Operators from Noisy Data

Abstract: We study the Bayesian inverse problem of learning a linear operator on a Hilbert space from its noisy pointwise evaluations on random input data. Our framework assumes that this target operator is selfadjoint and diagonal in a basis shared with the Gaussian prior and noise covariance operators arising from the imposed statistical model and is able to handle target operators that are compact, bounded, or even unbounded. We establish posterior contraction rates with respect to a family of Bochner norms as the nu… Show more

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Cited by 8 publications
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