A conjugate gradient method for the unconstrained minimization of strictly convex quadratic splines

A conjugate gradient method for the unconstrained minimization of strictly convex quadratic splines

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Article ID: iaor19972071
Country: Netherlands
Volume: 72
Issue: 1
Start Page Number: 17
End Page Number: 32
Publication Date: Jan 1996
Journal: Mathematical Programming (Series A)
Authors:
Keywords: programming: quadratic
Abstract:

This paper shows that an analogue of the classical conjugate gradient method converges linearly when applied to solving the problem of unconstrained minimization of a strictly convex quadratic spline. Since a strictly convex quadratic program with simple bound constraints can be reformulated as unconstrained minimization of a strictly convex quadratic spline, the conjugate gradient method is used to solve the unconstrained reformulation and find the solution of the original quadratic program. In particular, if the solution of the original quadratic program is nondegenerate, then the conjugate gradient methods finds the solution in a finite number of iterations.

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