Quadratically constrained least squares and quadratic problems |
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Authors: | Gene H. Golub Urs von Matt |
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Affiliation: | (1) Department of Computer Science, Stanford University, 94305 Stanford, CA, USA;(2) Institut für Wissenschaftliches Rechnen, ETH Zentrum, CH-8092 Zürich, Switzerland |
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Abstract: | Summary We consider the following problem: Compute a vectorx such that Ax–b2=min, subject to the constraint x2=. A new approach to this problem based on Gauss quadrature is given. The method is especially well suited when the dimensions ofA are large and the matrix is sparse.It is also possible to extend this technique to a constrained quadratic form: For a symmetric matrixA we consider the minimization ofxTAx–2bTx subject to the constraint x2=.Some numerical examples are given.This work was in part supported by the National Science Foundation under Grant DCR-8412314 and by the National Institute of Standards and Technology under Grant 60NANB9D0908. |
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Keywords: | 65F20 |
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