On the rate of convergence of sequential quadratic programming with nondifferentiable exact penalty function in the presence of constraint degeneracy |
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Authors: | Mihai Anitescu |
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Affiliation: | (1) Department of Mathematics, University of Pittsburgh, Thackeray 301, Pittsburgh, PA 15260, USA, e-mail: anitescu@math.pitt.edu, US |
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Abstract: | ![]() We analyze the convergence of a sequential quadratic programming (SQP) method for nonlinear programming for the case in which the Jacobian of the active constraints is rank deficient at the solution and/or strict complementarity does not hold for some or any feasible Lagrange multipliers. We use a nondifferentiable exact penalty function, and we prove that the sequence generated by an SQP using a line search is locally R-linearly convergent if the matrix of the quadratic program is positive definite and constant over iterations, provided that the Mangasarian-Fromovitz constraint qualification and some second-order sufficiency conditions hold. Received: April 28, 1998 / Accepted: June 28, 2001?Published online April 12, 2002 |
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Keywords: | : linear convergence – nondifferentiable exact penalty – degenerate nonlinear program |
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