2023
DOI: 10.1002/nla.2528
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Low‐rank updates of matrix square roots

Shany Shmueli,
Petros Drineas,
Haim Avron

Abstract: Models in which the covariance matrix has the structure of a sparse matrix plus a low rank perturbation are ubiquitous in data science applications. It is often desirable for algorithms to take advantage of such structures, avoiding costly matrix computations that often require cubic time and quadratic storage. This is often accomplished by performing operations that maintain such structures, for example, matrix inversion via the Sherman–Morrison–Woodbury formula. In this article, we consider the matrix square… Show more

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