In this article, we combine results from the theory of linear exponential families, polyhedral geometry and algebraic geometry to provide analytic and geometric characterizations of log-linear models and maximum likelihood estimation. Geometric and combinatorial conditions for the existence of the Maximum Likelihood Estimate (MLE) of the cell mean vector of a contingency table are given for general log-linear models under conditional Poisson sampling. It is shown that any log-linear model can be generalized to an extended exponential family of distributions parametrized, in a mean value sense, by points of a polyhedron. Such a parametrization is continuous and, with respect to this extended family, the MLE always exists and is unique. In ad...
The paper considers general multiplicative models for complete and incomplete contingency tables tha...
AbstractThe paper considers general multiplicative models for complete and incomplete contingency ta...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
AbstractWe provide a polyhedral description of the conditions for the existence of the maximum likel...
The common view of the history of contingency tables is that it begins in 1900 with the work of Pear...
The common view of the history of contingency tables is that it begins in 1900 with the work of Pear...
Key Words: exponential families; graphical models; stepwise Bayes It is well known that for certain ...
Publisher Copyright: © 2022 The Author(s)We study probability density functions that are log-concave...
In this paper, algorithms are described for obtaining the maximum likelihood estimates of the parame...
Algebraic statistics exploits the use of algebraic techniques to develop new paradigms and algorithm...
We study the problem of maximum likelihood estimation of densities that are log-concave and lie in t...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
Statistical models defined by imposing restrictions on marginal distri-butions of contingency tables...
Models defined by a set of conditional independence restrictions play an important role in statistic...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
The paper considers general multiplicative models for complete and incomplete contingency tables tha...
AbstractThe paper considers general multiplicative models for complete and incomplete contingency ta...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
AbstractWe provide a polyhedral description of the conditions for the existence of the maximum likel...
The common view of the history of contingency tables is that it begins in 1900 with the work of Pear...
The common view of the history of contingency tables is that it begins in 1900 with the work of Pear...
Key Words: exponential families; graphical models; stepwise Bayes It is well known that for certain ...
Publisher Copyright: © 2022 The Author(s)We study probability density functions that are log-concave...
In this paper, algorithms are described for obtaining the maximum likelihood estimates of the parame...
Algebraic statistics exploits the use of algebraic techniques to develop new paradigms and algorithm...
We study the problem of maximum likelihood estimation of densities that are log-concave and lie in t...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
Statistical models defined by imposing restrictions on marginal distri-butions of contingency tables...
Models defined by a set of conditional independence restrictions play an important role in statistic...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...
The paper considers general multiplicative models for complete and incomplete contingency tables tha...
AbstractThe paper considers general multiplicative models for complete and incomplete contingency ta...
In categorical data analysis, log-linear models are widely used statistical tools for analyzing the ...