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A new three-term spectral conjugate gradient algorithm with higher numerical performance for solving large scale optimization problems based on Quasi-Newton equation

机译:一种新的三级光谱共轭梯度算法,具有较高的数值性能,用于解决基于准牛顿方程的大规模优化问题

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摘要

A new spectral three-term conjugate gradient algorithm in virtue of the Quasi-Newton equation is developed for solving large-scale unconstrained optimization problems. It is proved that the search directions in this algorithm always satisfy a sufficiently descent condition independent of any line search. Global convergence is established for general objective functions if the strong Wolfe line search is used. Numerical experiments are employed to show its high numerical performance in solving large-scale optimization problems. Particularly, the developed algorithm is implemented to solve the 100 benchmark test problems from CUTE with different sizes from 1000 to 10,000, in comparison with some similar ones in the literature. The numerical results demonstrate that our algorithm outperforms the state-of-the-art ones in terms of less CPU time, less number of iteration or less number of function evaluation.
机译:开发了一种新的谱三术共轭梯度算法,用于解决大规模无约束优化问题。 事实证明,该算法中的搜索方向总是满足与任何线路搜索无关的足够下降的条件。 如果使用强大的Wolfe线路搜索,则为一般客观函数建立全局收敛。 使用数值实验来阐述求解大规模优化问题的高值性能。 特别是,与文献中的一些类似的尺寸相比,实施了发达的算法以解决从1000到10,000的可爱的100个基准测试问题。 数值结果表明,我们的算法在较少的CPU时间,较少数量的迭代或少量函数评估方面优于最先进的算法。

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