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Principal points for an allometric extension model

机译:异形延伸模型的要点

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A set of n-principal points of a p-dimensional distribution is an optimal n-point-approximation of the distribution in terms of a squared error loss. It is in general difficult to derive an explicit expression of principal points. Hence, we may have to search the whole space R~p for n-principal points. Many efforts have been devoted to establish results that specify a linear subspace in which principal points lie. However, the previous studies focused on elliptically symmetric distributions and location mixtures of spherically symmetric distributions, which may not be suitable to many practical situations. In this paper,we deal with amixture of elliptically symmetric distributions that form an allometric extension model, which has been widely used in the context of principal component analysis.We give conditions under which principal points lie in the linear subspace spanned by the first several principal components.
机译:p维分布的一组n个主要点是就平方误差损失而言,分布的最佳n点近似。通常很难得出主要点的明确表达。因此,我们可能必须在整个空间R〜p中搜索n个主要点。已经做出了许多努力来建立指定指定主点所在的线性子空间的结果。然而,先前的研究集中于椭圆对称分布和球对称分布的位置混合,这可能不适用于许多实际情况。在本文中,我们处理形成对称扩展模型的椭圆对称分布的混合物,该模型已在主成分分析的背景下得到了广泛应用。我们给出了主点位于由前几个主成分跨越的线性子空间中的条件组件。

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