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Exploiting Negative Curvature Directions in Linesearch Methods for Unconstrained Optimization

Optimization Methods and Software - United Kingdom
doi 10.1080/10556780008805794
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Abstract

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Categories
ControlApplied MathematicsOptimizationSoftware
Date

January 1, 2000

Authors
N. I. M. GouldS. LucidiM. RomaPH. L. Toint
Publisher

Informa UK Limited


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