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New BFGS method for unconstrained optimization problem based on modified Armijo line search

机译:基于改进Armijo线搜索的无约束优化问题新BFGS方法

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In this article, a class of nonconvex unconstrained optimization problems is considered. As the Armijo line search is less costing in finding a steplength, a new Armijo-type line search (called WALS) with desirable features of the Wolfe condition is employed in the proposed modified BFGS method. A new updating formula incorporated with WALS is constructed and generates approximate Hessian matrices which are positive definite. On this basis, a class of well-defined modified BFGS algorithms is developed. It shows that under some suitable conditions, the modified BFGS algorithm is globally convergent. Numerical experiments are carried out on 20 benchmark test problems and the obtained results clearly indicate the effectiveness of the developed algorithm over two most popular BFGStype algorithms available in the literature.
机译:在本文中,将考虑一类非凸无约束优化问题。由于Armijo线搜索在查找步长方面花费较少,因此在提出的改进BFGS方法中采用了具有Wolfe条件理想特征的新型Armijo型线搜索(称为WALS)。构造了与WALS结合的新更新公式,并生成正定的近似Hessian矩阵。在此基础上,开发了一类定义明确的改进BFGS算法。结果表明,在一定条件下,改进的BFGS算法是全局收敛的。在20个基准测试问题上进行了数值实验,获得的结果清楚地表明,与文献中提供的两种最流行的BFGStype算法相比,该算法的有效性。

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