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Optimal Algorithms and the BFGS Updating Techniques for Solving Unconstrained Nonlinear Minimization Problems

机译:求解无约束非线性最小化问题的最佳算法和BFGS更新技术

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To solve an unconstrained nonlinear minimization problem, we propose an optimal algorithm (OA) as well as a globally optimal algorithm (GOA), by deflecting the gradient direction to the best descent direction at each iteration step, and with an optimal parameter being derived explicitly. An invariant manifold defined for the model problem in terms of a locally quadratic function is used to derive a purely iterative algorithm and the convergence is proven. Then, the rank-two updating techniques of BFGS are employed, which result in several novel algorithms as being faster than the steepest descent method (SDM) and the variable metric method (DFP). Six numerical examples are examined and compared with exact solutions, revealing that the new algorithms of OA, GOA, and the updated ones have superior computational efficiency and accuracy.
机译:为了解决不受约束的非线性最小化问题,我们提出了一种最佳算法(OA)以及全局最佳算法(GOA),通过在每个迭代步骤中偏转到最佳下降方向,并且具有明确导出的最佳参数。在局部二次函数方面用于模型问题定义的不变歧管用于导出纯粹的迭代算法,并且已证明收敛。然后,采用BFGS的等级 - 两个更新技术,这导致几种新颖的算法比陡峭的下降方法(SDM)和可变度量方法(DFP)更快。检查六个数值例子并与精确的解决方案进行比较,揭示了OA,GOA和更新的新算法具有卓越的计算效率和准确性。

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