We consider the situation of two ordered categorical variables and a binary outcome variable, where one or both of the categorical variables may have missing values. The goal is to estimate the probability of response of the outcome variable for each cell of the contingency table of categorical variables while incorporating the fact that the categorical variables are ordered. The probability of response is assumed to change monotonically as each of the categorical variables changes level. A probability model is used in which the response is binomial with parameters p ij for each cell ( i , j ) and the number of observations in each cell is multinomial. Estimation approaches that incorporate Gibbs sampling with order restrictions on p...
Treatment analyses based on average outcomes do not immediately generalize to the case of ordered re...
AbstractIn this article, likelihood ratio tests (LRTs) are developed for detecting that stochastic t...
AbstractTests for comparing a multivariate response on a control and on a treatment population are c...
In this dissertation, we study three problems related to statistical inference under order restricti...
In studying the relationship between an ordered categorical predictor and an event time, it is stand...
In social and biomedical sciences, testing in contingency tables often involves order restrictions o...
In biomedical studies, there is often interest in assessing the association between one or more orde...
Researchers often analyze data assuming models with constrained parameters. Order constrained parame...
Summary: We study a binary regression model where the response variable $\Delta$ is the indicator of...
Procedures are discussed for the analysis of ordered categorical responses which are analogous to li...
This paper deals with the identification of treatment effects when the outcome variable is ordered. ...
The paper introduces a simple model for repeated observations of an ordered categorical response var...
Medical researchers strive to collect complete information, but most studies will have some degree o...
Consider testing for independence against stochastic order in an ordered 2xJ contingency table, unde...
SUMMARY. In studying the relationship between an ordered categorical predictor and an event time, it...
Treatment analyses based on average outcomes do not immediately generalize to the case of ordered re...
AbstractIn this article, likelihood ratio tests (LRTs) are developed for detecting that stochastic t...
AbstractTests for comparing a multivariate response on a control and on a treatment population are c...
In this dissertation, we study three problems related to statistical inference under order restricti...
In studying the relationship between an ordered categorical predictor and an event time, it is stand...
In social and biomedical sciences, testing in contingency tables often involves order restrictions o...
In biomedical studies, there is often interest in assessing the association between one or more orde...
Researchers often analyze data assuming models with constrained parameters. Order constrained parame...
Summary: We study a binary regression model where the response variable $\Delta$ is the indicator of...
Procedures are discussed for the analysis of ordered categorical responses which are analogous to li...
This paper deals with the identification of treatment effects when the outcome variable is ordered. ...
The paper introduces a simple model for repeated observations of an ordered categorical response var...
Medical researchers strive to collect complete information, but most studies will have some degree o...
Consider testing for independence against stochastic order in an ordered 2xJ contingency table, unde...
SUMMARY. In studying the relationship between an ordered categorical predictor and an event time, it...
Treatment analyses based on average outcomes do not immediately generalize to the case of ordered re...
AbstractIn this article, likelihood ratio tests (LRTs) are developed for detecting that stochastic t...
AbstractTests for comparing a multivariate response on a control and on a treatment population are c...