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On the convergence of trust region algorithms for unconstrained minimization without derivatives

机译:关于无导数无约束最小化的信赖域算法的收敛性

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We consider iterative trust region algorithms for the unconstrained minimization of an objective function F ( x)F ( underline{x}), x Î Rnunderline{x}in mathcal{R}^{n}, when F is differentiable but no derivatives are available, and when each model of F is a linear or a quadratic polynomial. The models interpolate F at n+1 points, which defines them uniquely when they are linear polynomials. In the quadratic case, second derivatives of the models are derived from information from previous iterations, but there are so few data that typically only the magnitudes of second derivative estimates are correct. Nevertheless, numerical results show that much faster convergence is achieved when quadratic models are employed instead of linear ones. Just one new value of F is calculated on each iteration. Changes to the variables are either trust region steps or are designed to maintain suitable volumes and diameters of the convex hulls of the interpolation points. It is proved that, if F is bounded below, if ∇2 F is also bounded, and if the number of iterations is infinite, then the sequence of gradients ÑF ( x k )underline{nabla}F ( underline{x}_{,k} ), k=1,2,3,…, converges to zero, where x kunderline{x}_{,k} is the centre of the trust region of the k-th iteration.
机译:我们考虑迭代信任域算法,用于在数学运算{R} ^ {n}中无约束地最小化目标函数F(x)F(下划线{x}),xÎR n 下划线{x} ,当F是可微但没有导数时,以及当F的每个模型是线性或二次多项式时。模型在n + 1个点上插值F,当它们是线性多项式时,它们唯一地定义它们。在二次情况下,模型的二阶导数是从先前迭代的信息中得出的,但是数据很少,通常只有二阶导数估计的幅度是正确的。但是,数值结果表明,采用二次模型代替线性模型时,收敛速度更快。每次迭代仅计算一个新的F值。变量的更改要么是信任区域步长,要么被设计为维持插值点凸包的合适体积和直径。证明了,如果F在下面有界,则∇ 2 F也有界,并且如果迭代次数是无限的,则梯度序列ÑF(x k )下划线{nabla} F(下划线{x} _ {,k}),k = 1,2,3,…,收敛到零,其中x k 下划线{x} _ {, k}是第k次迭代的信任区域的中心。

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