JOURNAL ARTICLE

A Scaled Conjugate Gradient Method for Solving Monotone Nonlinear Equations with Convex Constraints

Sheng WangHong-Bo Guan

Year: 2013 Journal:   Journal of Applied Mathematics Vol: 2013 Pages: 1-7   Publisher: Hindawi Publishing Corporation

Abstract

Based on the Scaled conjugate gradient (SCALCG) method presented by Andrei (2007) and the projection method presented by Solodov and Svaiter, we propose a SCALCG method for solving monotone nonlinear equations with convex constraints. SCALCG method can be regarded as a combination of conjugate gradient method and Newton-type method for solving unconstrained optimization problems. So, it has the advantages of the both methods. It is suitable for solving large-scale problems. So, it can be applied to solving large-scale monotone nonlinear equations with convex constraints. Under reasonable conditions, we prove its global convergence. We also do some numerical experiments show that the proposed method is efficient and promising.

Keywords:
Conjugate gradient method Monotone polygon Nonlinear conjugate gradient method Mathematics Nonlinear system Convergence (economics) Gradient method Regular polygon Derivation of the conjugate gradient method Mathematical optimization Applied mathematics Conjugate residual method Projection (relational algebra) Projection method Proximal Gradient Methods Convex optimization Computer science Algorithm Dykstra's projection algorithm Gradient descent Geometry

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Citation History

Topics

Advanced Optimization Algorithms Research
Physical Sciences →  Mathematics →  Numerical Analysis
Iterative Methods for Nonlinear Equations
Physical Sciences →  Mathematics →  Numerical Analysis
Sparse and Compressive Sensing Techniques
Physical Sciences →  Engineering →  Computational Mechanics
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