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首页> 外文期刊>Mathematical Programming >On a characterization of convexity-preserving maps, Davidon’s collinear scalings and Karmarkar’s projective transformations
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On a characterization of convexity-preserving maps, Davidon’s collinear scalings and Karmarkar’s projective transformations

机译:在保留凸性贴图的特征上,Davidon的共线比例缩放和Karmarkar的投影变换

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In a recent paper, the authors have proved results characterizing convexity-preserving maps defined on a subset of a not-necessarily finite dimensional real vector space as projective maps. The purpose of this note is three-fold. First, we state a theorem characterizing continuous, injective, convexity-preserving maps from a relatively open, connected subset of an affine subspace of ℝ m into ℝ n as projective maps. This result follows from the more general results stated and proved in a coordinate-free manner in the above paper, and is intended to be more accessible to researchers interested in optimization algorithms. Second, based on that characterization theorem, we offer a characterization theorem for collinear scalings first introduced by Davidon in 1977 for deriving certain algorithms for nonlinear optimization, and a characterization theorem for projective transformations used by Karmarkar in 1984 in his linear programming algorithm. These latter two theorems indicate that Davidon’s collinear scalings and Karmarkar’s projective transformations are the only continuous, injective, convexity-preserving maps possessing certain features that Davidon and Karmarkar respectively desired in the derivation of their algorithms. The proofs of these latter two theorems utilize our characterization of continuous, injective, convexity-preserving maps in a way that has implications to the choice of scalings and transformations in the derivation of optimization algorithms in general. The third purpose of this note is to point this out.
机译:在最近的一篇论文中,作者已经证明了将在不需要的有限维实向量空间的子集上定义的保凸图作为投影图的特征。本文的目的是三方面的。首先,我们陈述一个定理,该定理描述连续的,射影的,保凸的图,这些图从ℝm 的仿射子空间的相对开放的,连通的子集变成into n 的射影图。该结果来自以上论文中陈述的更一般的结果,并且以无坐标的方式证明了该结果,旨在使对优化算法感兴趣的研究人员可以更容易地获得该结果。其次,基于该刻画定理,我们提供了由Davidon于1977年首次引入的用于共线性缩放的刻画定理,以推导某些用于非线性优化的算法,并提供了Karmarkar于1984年在其线性规划算法中使用的投影变换的刻画定理。后两个定理表明,Davidon的共线比例缩放和Karmarkar的射影变换是唯一具有Davidon和Karmarkar在推导其算法时分别需要的某些特征的连续,内射,保凸性图。后两个定理的证明利用我们对连续,内射,保凸性图的刻画,对优化算法的推导通常会影响缩放比例和变换的选择。本说明的第三个目的是指出这一点。

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