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The maximum likelihood degree of toric varieties

机译:复曲面品种的最大似然度

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We study the maximum likelihood (ML) degree of toric varieties, known as discrete exponential models in statistics. By introducing scaling coefficients to the monomial parameterization of the toric variety, one can change the ML degree. We show that the ML degree is equal to the degree of the toric variety for generic scalings, while it drops if and only if the scaling vector is in the locus of the principal A-determinant. We also illustrate how to compute the ML estimate of a toric variety numerically via homotopy continuation from a scaled toric variety with low ML degree. Throughout, we include examples motivated by algebraic geometry and statistics. We compute the ML degree of rational normal scrolls and a large class of Veronese-type varieties. In addition, we investigate the ML degree of scaled Segre varieties, hierarchical log-linear models, and graphical models. (C) 2018 Elsevier Ltd. All rights reserved.
机译:我们研究了复曲面变种的最大似然(ML)程度,在统计中称为离散指数模型。通过将缩放系数引入复曲面品种的单项参数化,可以更改ML度。我们表明,ML程度等于通用缩放的复曲面度,而当且仅当缩放向量位于主要A行列式的位置时,ML才降低。我们还将说明如何通过低ML度的缩放后的复曲面变种的同态连续性,从数值上计算复曲面变种的ML估计。在整个过程中,我们都包含以代数几何和统计学为动机的示例。我们计算有理正态滚动和一大类Veronese型品种的ML度。此外,我们研究了按比例缩放的Segre品种,分层对数线性模型和图形模型的ML度。 (C)2018 Elsevier Ltd.保留所有权利。

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