A majorization algorithm for constrained correlation matrix approximation |
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Authors: | Dan Simon Jeff Abell |
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Affiliation: | a Cleveland State University, Department of Electrical and Computer Engineering, 2121 Euclid Avenue, Cleveland, Ohio 44115, United States b General Motors Company, Global Research & Development, 30500 Mound Road, Warren, Michigan 48090, United States |
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Abstract: | ![]() We desire to find a correlation matrix of a given rank that is as close as possible to an input matrix R, subject to the constraint that specified elements in must be zero. Our optimality criterion is the weighted Frobenius norm of the approximation error, and we use a constrained majorization algorithm to solve the problem. Although many correlation matrix approximation approaches have been proposed, this specific problem, with the rank specification and the constraints, has not been studied until now. We discuss solution feasibility, convergence, and computational effort. We also present several examples. |
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Keywords: | Primary: 62H20, 80M30 Secondary: 62P30 |
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