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Nonlinear Rescaling and Proximal-Like Methods in Convex OptimizationThe nonlinear rescaling principle (NRP) consists of transforming the objective function and/or the constraints of a given constrained optimization problem into another problem which is equivalent to the original one in the sense that their optimal set of solutions coincides. A nonlinear transformation parameterized by a positive scalar parameter and based on a smooth scaling function is used to transform the constraints. The methods based on NRP consist of sequential unconstrained minimization of the classical Lagrangian for the equivalent problem, followed by an explicit formula updating the Lagrange multipliers. We first show that the NRP leads naturally to proximal methods with an entropy-like kernel, which is defined by the conjugate of the scaling function, and establish that the two methods are dually equivalent for convex constrained minimization problems. We then study the convergence properties of the nonlinear rescaling algorithm and the corresponding entropy-like proximal methods for convex constrained optimization problems. Special cases of the nonlinear resealing algorithm are presented. In particular a new class of exponential penalty-modified barrier functions methods is introduced.
Document ID
19990007951
Acquisition Source
Legacy CDMS
Document Type
Reprint (Version printed in journal)
Authors
Polyak, Roman
(George Mason Univ. Fairfax, VA United States)
Teboulle, Marc
(Tel-Aviv Univ., Ramat-Aviv Tel-Aviv, Israel)
Date Acquired
August 19, 2013
Publication Date
January 1, 1997
Publication Information
Publication: Mathematical Programming
Publisher: Elsevier Science Publishers
Volume: 76
ISSN: 0025-5610
Subject Category
Computer Programming And Software
Funding Number(s)
CONTRACT_GRANT: NAGw-1397
CONTRACT_GRANT: NSF DMS-94-03218
CONTRACT_GRANT: NSF DMS-92-01297
CONTRACT_GRANT: NSF DMS-94-01871
Distribution Limits
Public
Copyright
Other

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