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A new three-term conjugate gradient algorithm for unconstrained optimization

机译:一种新的无约束优化的三项共轭梯度算法

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摘要

A new three-term conjugate gradient algorithm which satisfies both the descent condition and the conjugacy condition is presented. The algorithm is obtained by minimization the one-parameter quadratic model of the objective function in which the symmetrical approximation of the Hessian matrix satisfies the general quasi-Newton equation. The search direction is obtained by symmetrization of the iteration matrix corresponding to the solution of the quadratic model minimization. Using the general quasi-Newton equation the search direction includes a parameter which is determined by the minimization of the condition number of the iteration matrix. It is proved that this direction satisfies both the conjugacy and the descent condition. The new approximation of the minimum is obtained by the general Wolfe line search using by now a standard acceleration technique. Under standard assumptions, for uniformly convex functions the global convergence of the algorithm is proved. The numerical experiments using 800 large-scale unconstrained optimization test problems show that minimization of the condition number of the iteration matrix lead us to a value of the parameter in the search direction able to define a competitive three-term conjugate gradient algorithm. Numerical comparisons of this variant of the algorithm versus known conjugate gradient algorithms ASCALCG, CONMIN, TTCG and THREECG, as well as the limited memory quasi-Newton algorithm LBFGS (m = 5) and the truncated Newton TN show that our algorithm is indeed more efficient and more robust.
机译:提出了同时满足下降条件和共轭条件的三项共轭梯度算法。通过最小化目标函数的一参数二次模型来获得该算法,在该模型中,Hessian矩阵的对称逼近满足一般的拟牛顿方程。通过对应于二次模型最小化解的迭代矩阵的对称化获得搜索方向。使用一般的拟牛顿方程,搜索方向包括一个参数,该参数由最小化迭代矩阵的条件数确定。事实证明,该方向既满足共轭性又满足下降条件。最小值的新近似值是通过一般的Wolfe线搜索使用现在的标准加速技术获得的。在标准假设下,对于均匀凸函数,证明了算法的全局收敛性。使用800个大规模无约束优化测试问题进行的数值实验表明,迭代矩阵条件数的最小化使我们获得了可以定义竞争性三项共轭梯度算法的搜索方向上的参数值。该算法变体与已知的共轭梯度算法ASCALCG,CONMIN,TTCG和THREECG以及有限存储准牛顿算法LBFGS(m = 5)和截短的牛顿TN的数值比较表明,我们的算法确实更有效并且更强大。

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