Third-order moment varieties of linear non-Gaussian graphical models

IF 1.4 4区 数学 Q2 MATHEMATICS, APPLIED Information and Inference-A Journal of the Ima Pub Date : 2021-12-20 DOI:10.1093/imaiai/iaad007
Carlos Am'endola, M. Drton, Alexandros Grosdos, R. Homs, Elina Robeva
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引用次数: 3

Abstract

In this paper, we study linear non-Gaussian graphical models from the perspective of algebraic statistics. These are acyclic causal models in which each variable is a linear combination of its direct causes and independent noise. The underlying directed causal graph can be identified uniquely via the set of second and third-order moments of all random vectors that lie in the corresponding model. Our focus is on finding the algebraic relations among these moments for a given graph. We show that when the graph is a polytree, these relations form a toric ideal. We construct explicit trek-matrices associated to 2-treks and 3-treks in the graph. Their entries are covariances and third-order moments and their $2$-minors define our model set-theoretically. Furthermore, we prove that their 2-minors also generate the vanishing ideal of the model. Finally, we describe the polytopes of third-order moments and the ideals for models with hidden variables.
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线性非高斯图形模型的三阶矩变化
本文从代数统计的角度研究了线性非高斯图形模型。这些是无循环的因果模型,其中每个变量是其直接原因和独立噪声的线性组合。潜在的有向因果图可以通过位于相应模型中的所有随机向量的二阶和三阶矩集唯一地识别。我们的重点是找出给定图中这些矩之间的代数关系。我们证明当图是一个多树时,这些关系形成一个环理想。我们在图中构造了与2-treks和3-treks相关的显式徒步矩阵。它们的项是协方差和三阶矩,它们的$2$次元从理论上定义了我们的模型集。进一步证明了它们的2次元也产生了模型的消失理想。最后,我们描述了三阶矩的多面体和带隐变量模型的理想。
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来源期刊
CiteScore
3.90
自引率
0.00%
发文量
28
期刊最新文献
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