The spectral form of the Dai-Yuan conjugate gradient algorithm

Section: Article
Published
Jun 25, 2025
Pages
214-221

Abstract

Conjugate Gradient (CG) methods comprise a class of unconstrained optimization algorithms which are characterized by low memory requirements and strong local and global convergence properties. Most of CG methods do not always generate a descent search directions, so the descent or sufficient descent condition is usually assumed in the analysis and implementations. By assuming a descent and pure conjugacy conditions a new version of spectral Dai-Yuan (DY) non-linear conjugate gradient method introduced in this article. Descent property for the suggested method is proved and numerical tests and comparisons with other methods for large-scale unconstrained problems are given.

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How to Cite

J. Salem, A.-G., & K. Abbo, K. (2025). The spectral form of the Dai-Yuan conjugate gradient algorithm. IRAQI JOURNAL OF STATISTICAL SCIENCES, 11(2), 214–221. Retrieved from https://rjps.uomosul.edu.iq/index.php/stats/article/view/20960