无约束优化新三项共轭梯度的全局收敛性

Ahmed Anwer Mustafa, Salah Gazi Shareef
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引用次数: 2

摘要

本文提出了求解三项三次步长无约束优化问题的共轭梯度法的一个新的公式:该方法具有下降条件、充分下降条件、共轭条件和全局收敛性。与两种标准共轭梯度算法的数值比较表明,该算法在迭代次数和求值函数数量上是非常有效的。
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Global convergence of new three terms conjugate gradient for unconstrained optimization
In this paper, a new formula of 𝛽𝑘 is suggested for the conjugate gradient method of solving unconstrained optimization problems based on three terms and step size of cubic. Our new proposed CG method has descent condition, sufficient descent condition, conjugacy condition, and global convergence properties. Numerical comparisons with two standard conjugate gradient algorithms show that this algorithm is very effective depending on the number of iterations and the number of functions evaluated.
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审稿时长
6 weeks
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