Sequences of regressions and their independences
Reviewartikel, 2012

Ordered sequences of univariate or multivariate regressions provide statistical models for analysing data from randomized, possibly sequential interventions, from cohort or multi-wave panel studies, but also from cross-sectional or retrospective studies. Conditional independences are captured by what we name regression graphs, provided the generated distribution shares some properties with a joint Gaussian distribution. Regression graphs extend purely directed, acyclic graphs by two types of undirected graph, one type for components of joint responses and the other for components of the context vector variable. We review the special features and the history of regression graphs, prove criteria for Markov equivalence and discuss the notion of a simpler statistical covering model. Knowledge of Markov equivalence provides alternative interpretations of a given sequence of regressions, is essential for machine learning strategies and permits to use the simple graphical criteria of regression graphs on graphs for which the corresponding criteria are in general more complex. Under the known conditions that a Markov equivalent directed acyclic graph exists for any given regression graph, we give a polynomial time algorithm to find one such graph.

multiplicative models

Graphical Markov models

graph markov-models

maximum-likelihood

covariance-selection

Covariance graphs

conditional-independence

seemingly unrelated regressions

equivalence classes

Chain graphs

chain graphs

Concentration graphs

Independence

contingency-tables

triangular systems

Författare

Nanny Wermuth

Chalmers, Matematiska vetenskaper, Matematisk statistik

Göteborgs universitet

K. Sadeghi

University of Oxford

Test

1133-0686 (ISSN)

Vol. 21 2 215-252

Ämneskategorier

Sannolikhetsteori och statistik

DOI

10.1007/s11749-012-0290-6

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2021-07-21