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Low-Rank Positive Approximants of Symmetric Matrices

Low-Rank Positive Approximants of Symmetric Matrices
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摘要 Given a symmetric matrix X, we consider the problem of finding a low-rank positive approximant of X. That is, a symmetric positive semidefinite matrix, S, whose rank is smaller than a given positive integer, , which is nearest to X in a certain matrix norm. The problem is first solved with regard to four common norms: The Frobenius norm, the Schatten p-norm, the trace norm, and the spectral norm. Then the solution is extended to any unitarily invariant matrix norm. The proof is based on a subtle combination of Ky Fan dominance theorem, a modified pinching principle, and Mirsky minimum-norm theorem. Given a symmetric matrix X, we consider the problem of finding a low-rank positive approximant of X. That is, a symmetric positive semidefinite matrix, S, whose rank is smaller than a given positive integer, , which is nearest to X in a certain matrix norm. The problem is first solved with regard to four common norms: The Frobenius norm, the Schatten p-norm, the trace norm, and the spectral norm. Then the solution is extended to any unitarily invariant matrix norm. The proof is based on a subtle combination of Ky Fan dominance theorem, a modified pinching principle, and Mirsky minimum-norm theorem.
作者 Achiya Dax
机构地区 Hydrological Service
出处 《Advances in Linear Algebra & Matrix Theory》 2014年第3期172-185,共14页 线性代数与矩阵理论研究进展(英文)
关键词 Low-Rank POSITIVE APPROXIMANTS Unitarily INVARIANT MATRIX Norms Low-Rank Positive Approximants Unitarily Invariant Matrix Norms
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