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Spectral conjugate gradient methods with sufficient descent property for large-scale unconstrained optimization

机译:具有足够下降特性的频谱共轭梯度方法用于大规模无约束优化

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摘要

A class of new spectral conjugate gradient methods are proposed in this paper. First, we modify the spectral Perry's conjugate gradient method, which is the best spectral conjugate gradient algorithm SCG by Birgin and Martinez [E.G. Birgin and J.M. Martinez, A spectral conjugate gradient method for unconstrained optimization, Appl. Math. Optim. 43 (2001), 117-128.], such that it possesses sufficient descent property for any (inexact) line search. It is shown that, for strongly convex functions, the method is a global convergent. Further, a global convergence result for nonconvex minimization is established when the line search fulfils the Wolfe line search conditions. Some other spectral conjugate gradient methods with guaranteed descent are presented here. Numerical comparisons are given with both SCG and CG_DESCENT methods using the unconstrained optimization problems in the CUTE library.
机译:本文提出了一类新的谱共轭梯度法。首先,我们修改频谱佩里的共轭梯度方法,这是Birgin和Martinez [E.G. Birgin和J.M. Martinez,无约束优化的频谱共轭梯度方法,应用数学。最佳43(2001),117-128。],以使其具有足够的下降特性以用于任何(不精确的)线搜索。结果表明,对于强凸函数,该方法是全局收敛的。此外,当线搜索满足沃尔夫线搜索条件时,将建立用于非凸最小化的全局收敛结果。这里介绍了具有下降保证的其他一些频谱共轭梯度方法。使用CUTE库中的无约束优化问题,使用SCG和CG_DESCENT方法进行了数值比较。

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