Abstract In this paper we have fitted the double binomial and multiplicative binomial distributions as log-linear models using sufficient statistics. This approach is not new as several authors have employed this approach, most especially in the analysis of the Human sex ratio in [1]. However, obtaining the estimated parameters of the distributions may be problematic, especially for the double binomial where the parameter estimate of π may not be readily available from the Log-Linear (LL) parameter estimates. Other issues associated with the LL approach is its implementation in the generalized linear model with covariates. The LL uses far more parameters than the procedure that employs conditional log-likelihoods functions where the margin...
Typically, small samples have always been a problem for binomial generalized linear models. Though g...
This paper discusses the log-linear model for multi-way contingency ta-ble, where the cell values re...
Abstract: Problem statement: Relative risk has concrete meanings of comparing two groups and measuri...
An estimate of the risk or prevalence ratio, adjusted for confounders, can be obtained from a log b...
Abstract: The Poisson loglinear model is a common choice for explaining variability in counts. Howev...
There is a great deal of literature on modeling (separately) either the univariate or joint distribu...
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....
This is yet another introduction to log-linear (“maximum entropy”) models for NLP practitioners, in ...
A large amount of data collected in the social sciences are counts crossclassified into categories. ...
An estimate of the risk or prevalence ratio, adjusted for confounders, can be obtained from a log b...
The logistic regression originally is intended to explain the relationship between the probability o...
In this paper, we compare the performances of several models for tting over-dispersed binary data. T...
Typically, small samples have always been a problem for binomial generalized linear models. Though g...
In this paper, algorithms are described for obtaining the maximum likelihood estimates of the parame...
Typically, small samples have always been a problem for binomial generalized linear models. Though g...
This paper discusses the log-linear model for multi-way contingency ta-ble, where the cell values re...
Abstract: Problem statement: Relative risk has concrete meanings of comparing two groups and measuri...
An estimate of the risk or prevalence ratio, adjusted for confounders, can be obtained from a log b...
Abstract: The Poisson loglinear model is a common choice for explaining variability in counts. Howev...
There is a great deal of literature on modeling (separately) either the univariate or joint distribu...
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....
This is yet another introduction to log-linear (“maximum entropy”) models for NLP practitioners, in ...
A large amount of data collected in the social sciences are counts crossclassified into categories. ...
An estimate of the risk or prevalence ratio, adjusted for confounders, can be obtained from a log b...
The logistic regression originally is intended to explain the relationship between the probability o...
In this paper, we compare the performances of several models for tting over-dispersed binary data. T...
Typically, small samples have always been a problem for binomial generalized linear models. Though g...
In this paper, algorithms are described for obtaining the maximum likelihood estimates of the parame...
Typically, small samples have always been a problem for binomial generalized linear models. Though g...
This paper discusses the log-linear model for multi-way contingency ta-ble, where the cell values re...
Abstract: Problem statement: Relative risk has concrete meanings of comparing two groups and measuri...