Open Access
VOL. 77 | 2018 Algebraic problems in structural equation modeling
Mathias Drton

Editor(s) Takayuki Hibi

Adv. Stud. Pure Math., 2018: 35-86 (2018) DOI: 10.2969/aspm/07710035

Abstract

The paper gives an overview of recent advances in structural equation modeling. A structural equation model is a multivariate statistical model that is determined by a mixed graph, also known as a path diagram. Our focus is on the covariance matrices of linear structural equation models. In the linear case, each covariance is a rational function of parameters that are associated to the edges and nodes of the graph. We statistically motivate algebraic problems concerning the rational map that parametrizes the covariance matrix. We review combinatorial tools such as the trek rule, projection to ancestral sets, and a graph decomposition due to Jin Tian. Building on these tools, we discuss advances in parameter identification, i.e., the study of (generic) injectivity of the parametrization, and explain recent results on determinantal relations among the covariances. The paper is based on lectures given at the 8th Mathematical Society of Japan Seasonal Institute.

Information

Published: 1 January 2018
First available in Project Euclid: 21 September 2018

zbMATH: 07034248
MathSciNet: MR3839705

Digital Object Identifier: 10.2969/aspm/07710035

Subjects:
Primary: 05C90 , 13P25 , 62H05

Keywords: Algebraic statistics , Covariance matrix , Gaussian distribution , Graphical model , Gröbner basis , structural equation model

Rights: Copyright © 2018 Mathematical Society of Japan

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