Convergence Properties of the Regularized Newton Method for the Unconstrained Nonconvex Optimization

Volume: 62, Issue: 1, Pages: 27 - 46
Published: Dec 1, 2009
Abstract
The regularized Newton method (RNM) is one of the efficient solution methods for the unconstrained convex optimization. It is well-known that the RNM has good convergence properties as compared to the steepest descent method and the pure Newton’s method. For example, Li, Fukushima, Qi and Yamashita showed that the RNM has a quadratic rate of convergence under the local error bound condition. Recently, Polyak showed that the global complexity...
Paper Details
Title
Convergence Properties of the Regularized Newton Method for the Unconstrained Nonconvex Optimization
Published Date
Dec 1, 2009
Volume
62
Issue
1
Pages
27 - 46
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