A scaled conjugate gradient method for solving monotone nonlinear equations with convex constraints

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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. © 2013 Sheng Wang and Hongbo Guan.

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Wang, S., & Guan, H. (2013). A scaled conjugate gradient method for solving monotone nonlinear equations with convex constraints. Journal of Applied Mathematics, 2013. https://doi.org/10.1155/2013/286486

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