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Some optimization problems in multivariate statistics

机译:多元统计中的一些优化问题

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Interesting and important multivariate statistical problems containing principal component analysis, statistical visualization and singular value decomposition, furthermore, one of the basic theorems of linear algebra, the matrix spectral theorem, the characterization of the structural stability of dynamical systems and many others lead to a new class of global optimization problems where the question is to find optimal orthogonal matrices. A special class is where the problem consists in finding, for any 2 ≤ k ≤ n, the dominant k-dimensional eigenspace of an n x n symmetric matrix A in R~n where the eigenspaces are spanned by the k largest eigenvectors. This leads to the maximization of a special quadratic function on the Stiefel manifold M_(n,k). Based on the global Lagrange multiplier rule developed in Rapcsak (1997) and the paper dealing with Stiefel manifolds in optimization theory (Rapcsak, 2002), the global optimality conditions of this smooth optimization problem are obtained, then they are applied in concrete cases.
机译:有趣且重要的多元统计问题,包括主成分分析,统计可视化和奇异值分解,此外,线性代数的基本定理之一,矩阵谱定理,动力学系统的结构稳定性表征以及许多其他问题导致了新的一类全局优化问题,其中的问题是找到最佳正交矩阵。一个特殊的类是问题所在,对于任何2≤k≤n,找出R〜n中n x n对称矩阵A的主导k维特征空间,其中特征空间被k个最大特征向量所覆盖。这导致在Stiefel流形M_(n,k)上的特殊二次函数最大化。基于Rapcsak(1997)提出的全局Lagrange乘子规则和优化理论中有关Stiefel流形的论文(Rapcsak,2002),获得了该光滑优化问题的全局最优性条件,然后将其应用于具体情况。

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