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arxiv: 1404.1610 · v1 · pith:6547XOZCnew · submitted 2014-04-06 · 🧮 math.NA · cs.NA

An Efficient Approach for Computing Optimal Low-Rank Regularized Inverse Matrices

classification 🧮 math.NA cs.NA
keywords inverseregularizedapproachforwardlow-rankmodeloptimalapplications
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Standard regularization methods that are used to compute solutions to ill-posed inverse problems require knowledge of the forward model. In many real-life applications, the forward model is not known, but training data is readily available. In this paper, we develop a new framework that uses training data, as a substitute for knowledge of the forward model, to compute an optimal low-rank regularized inverse matrix directly, allowing for very fast computation of a regularized solution. We consider a statistical framework based on Bayes and empirical Bayes risk minimization to analyze theoretical properties of the problem. We propose an efficient rank update approach for computing an optimal low-rank regularized inverse matrix for various error measures. Numerical experiments demonstrate the benefits and potential applications of our approach to problems in signal and image processing.

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