2020
DOI: 10.48550/arxiv.2003.10173
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Hierarchical Matrix Approximations of Hessians Arising in Inverse Problems Governed by PDEs

Abstract: Hessian operators arising in inverse problems governed by partial differential equations (PDEs) play a critical role in delivering efficient, dimension-independent convergence for both Newton solution of deterministic inverse problems, as well as Markov chain Monte Carlo sampling of posteriors in the Bayesian setting. These methods require the ability to repeatedly perform such operations on the Hessian as multiplication with arbitrary vectors, solving linear systems, inversion, and (inverse) square root. Unfo… Show more

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