This paper introduces a novel class of models for binary data, which we call log-mean linear models. They are specified by linear constraints on the log-mean linear parameter, defined as a log-linear expansion of the mean parameter of the multivariate Bernoulli distribution. We show that marginal independence relationships between variables can be specified by setting certain log-mean linear interactions to zero and,more specifically, that graphical models of marginal independence are log-mean linear models. Our approach overcomes some drawbacks of the existing parameterizations of graphical models of marginal independence
In this paper we discuss a class of models of marginal independence for a set of categorical variab...
Log-linear models are the popular workhorses of analyzing contingency tables. A log-linear parameter...
In regression models for categorical data a linear model is typically related to the response variab...
This paper introduces a novel class of models for binary data, which we call log-mean linear models...
This paper introduces a novel class of models for binary data, which we call log-mean linear models....
We extend the log-mean linear parameterization for binary data to discrete variables with arbitrary ...
This work compares the performances of three parameterizations for defining parsimonious submodels o...
Models defined by a set of conditional independence restrictions play an important role in statistic...
Log-linear models are a classical tool for the analysis of contingency tables. In particular, the su...
Undirected graphical models for categorical data represent a set of conditional independencies betw...
Statistical models defined by imposing restrictions on marginal distri-butions of contingency tables...
This contribution aims to show how the log-mean linear parameterization for a set of categorical dat...
We study a class of conditional independence models for discrete data with the property that one or ...
This is yet another introduction to log-linear (“maximum entropy”) models for NLP practitioners, in ...
In this paper we discuss a class of models of marginal independence for a set of categorical variab...
Log-linear models are the popular workhorses of analyzing contingency tables. A log-linear parameter...
In regression models for categorical data a linear model is typically related to the response variab...
This paper introduces a novel class of models for binary data, which we call log-mean linear models...
This paper introduces a novel class of models for binary data, which we call log-mean linear models....
We extend the log-mean linear parameterization for binary data to discrete variables with arbitrary ...
This work compares the performances of three parameterizations for defining parsimonious submodels o...
Models defined by a set of conditional independence restrictions play an important role in statistic...
Log-linear models are a classical tool for the analysis of contingency tables. In particular, the su...
Undirected graphical models for categorical data represent a set of conditional independencies betw...
Statistical models defined by imposing restrictions on marginal distri-butions of contingency tables...
This contribution aims to show how the log-mean linear parameterization for a set of categorical dat...
We study a class of conditional independence models for discrete data with the property that one or ...
This is yet another introduction to log-linear (“maximum entropy”) models for NLP practitioners, in ...
In this paper we discuss a class of models of marginal independence for a set of categorical variab...
Log-linear models are the popular workhorses of analyzing contingency tables. A log-linear parameter...
In regression models for categorical data a linear model is typically related to the response variab...