一种新的基于弧搜索的优化方法

Xin Pan, Weikun Sun
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引用次数: 1

摘要

为了有效地解决目标函数高度非线性的无约束优化问题,本文提出了一种不同于直线搜索框架的创新优化框架。该方法首先利用非单调线搜索技术确定步长,然后生成由最陡下降方向和辅助向量组成的二维子空间。在此子空间中,以当前点为圆心,以步长为半径构造一个圆。在这个圆上,可以用圆弧搜索计算目标函数作为下一个迭代点的最小值,并利用最小值和当前点生成搜索方向。目标函数在搜索方向上的梯度变化用于确定下一步的步长。在一些温和的假设条件下,证明了该算法的全局收敛性。数值试验表明,该算法比共轭梯度方向算法更有效。弧搜索提高了迭代过程的效率。该算法只需要存储三个向量,适用于大规模问题。
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A New Method of Optimization Based on Arc Search
In order to efficiently solve the unconstrained optimization problem in which the objective function is very nonlinear, an innovative framework of optimization which is different from line search framework is proposed in this paper. This new method determines the step-length first with nonmonotone line search technique, and generates a two dimensional subspace spanned by the steepest-descent direction and an auxiliary vector. In this subspace, a circle with the current point as its center and with step-length as it radius is constructed. On this circle, the minimizer of the objective function as the next iterative point can be calculated with arc search, and the search direction can be generated with the minimizer and the current point. The variation of gradient of the objective function in the search direction is used for determining the step-length of the next step. The global convergence of this new algorithm is proved in this paper under some mild assumptions. Numerical tests illustrate that this new algorithm is more efficient than conjugate gradient direction. The arc search improves the efficiency of the iterative process. This new algorithm requires only the storage of three vectors such that it is suitable for large scale problems.
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