Global Convergence of a Curvilinear Search for Non-Convex Optimization

Bartholomew-Biggs, Michael, Beddiaf, Salah and Christianson, Bruce (2022) Global Convergence of a Curvilinear Search for Non-Convex Optimization. Numerical Algorithms. ISSN 1017-1398
Copy

For a non-convex function f : R^n → R with gradient g and Hessian H, define a step vector p(μ,x) as a function of scalar parameter μ and position vector x by the equation (H(x) + μI)p(μ, x) = −g(x). Under mild conditions on f, we construct criteria for selecting μ so as to ensure that the algorithm x := x + p(μ, x) descends to a second order stationary point of f, and avoids saddle points.


picture_as_pdf
NC2_v16_2.pdf
subject
Submitted Version
['licenses_description_other' not defined]
Available under ['licenses_typename_other' not defined]

View Download

Atom BibTeX OpenURL ContextObject in Span OpenURL ContextObject Dublin Core MPEG-21 DIDL Data Cite XML EndNote HTML Citation METS MODS RIOXX2 XML Reference Manager Refer ASCII Citation
Export

Downloads