Quadratically and superlinearly convergent algorithms for the solution of inequality constrained minimization problems (Q1897451)
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scientific article; zbMATH DE number 790566
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Quadratically and superlinearly convergent algorithms for the solution of inequality constrained minimization problems |
scientific article; zbMATH DE number 790566 |
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Quadratically and superlinearly convergent algorithms for the solution of inequality constrained minimization problems (English)
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9 October 1995
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Some Newton and quasi-Newton algorithms for the solution of inequality constrained minimization problems are considered. All the algorithms described produce sequences \(\{x_k\}\) converging \(q\)-superlinearly to the solution. Furthermore, under mild assumptions, a \(q\)-quadratic convergence rate in \(x\) is also attained. Other features of these algorithms are that only the solution of linear systems of equations is required at each iteration and that the strict complementarity assumption is never invoked. First, the superlinear or quadratic convergence rate of a Newton-like algorithm is proved. Then, a simpler version of this algorithm is studied, and it is shown that it is superlinearly convergent. Finally, quasi-Newton versions of the previous algorithms are considered and, provided the sequence defined by the algorithms converges, a characterization of superlinear convergence extending the result of Boggs, Tolle, and Wang is given.
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quadratic convergence
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multiplier functions
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quasi-Newton algorithms
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inequality constrained minimization problems
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strict complementarity
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superlinear convergence
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