A class of log-linear models, referred to as labelled graphical models (LGMs), is introduced for multinomial distributions. These models generalize graphical models (GMs) by employing partial conditional independence restrictions which are valid only in subsets of an outcome space. Theoretical results concerning model identifiability, decomposability and estimation are derived. A decision theoretical framework and a search algorithm for the identification of plausible models are described. Real data sets are used to illustrate that LGMs may provide a simpler interpretation of a dependence structure than GMs. Copyright 2003 Board of the Foundation of the Scandinavian Journal of Statistics..
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We use a close connection between the theory of Markov fields and that of log-linear interaction mod...
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Traditional graphical models are extended by allowing that the presence or absence of a connection b...
AbstractGiven a multinomial decomposable graphical model, we identify several alternative parametriz...
Graphical Markov models are multivariate statistical models in which the joint distribution satis¯e...
Log-linear models are a classical tool for the analysis of contingency tables. In particular, the su...
Given a multinomial decomposable graphical model, we identify several alternative parametrizations; ...
The Probabilistic Graphical Models (GM) use graphs for representing the joint distribution of q vari...
Undirected graphical models for categorical data represent a set of conditional independencies betw...
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Undirected graphical models, also known as Markov networks, enjoy popularity in a variety of applica...
This paper introduces a novel class of models for binary data, which we call log-mean linear models...
This thesis is concerned with the graphical modelling of multivariate data. The main aim of graphica...
The present paper considers discrete probability models with exact computational properties. In rela...