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Recent progress in unconstrained nonlinear optimization without derivatives
Authors:A. R. Conn  K. Scheinberg  Ph. L. Toint
Affiliation:(1) IBM T.J. Watson Research Center, P.O. Box 218, Yorktown, 10598 Heights, NY, USA;(2) Industrial Engineering and Operations Research Department, Columbia University, 10027-6699 New York, NY, USA;(3) Department of Mathematics, Facultés Universitaires ND de la Paix, 61, rue de Bruxelles, B-5000 Namur, Belgium
Abstract:We present an introduction to a new class of derivative free methods for unconstrained optimization. We start by discussing the motivation for such methods and why they are in high demand by practitioners. We then review the past developments in this field, before introducing the features that characterize the newer algorithms. In the context of a trust region framework, we focus on techniques that ensure a suitable “geometric quality” of the considered models. We then outline the class of algorithms based on these techniques, as well as their respective merits. We finally conclude the paper with a discussion of open questions and perspectives. Current reports available by anonymous ftp from the directory “pub/reports” on thales.math.fundp.ac.be. WWW: http://www.fundp.ac.be/ phtoint/pht/publications.html.
Keywords:Nonlinear optimization  Derivative-free methods  Unconstrained problems
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