In biomedical studies, there is often interest in assessing the association between one or more ordered categorical predictors and an outcome variable, adjusting for covariates. For a -level predictor, one typically uses either a degree of freedom (df) test or a single df trend test, which requires scores for the different levels of the predictor. In the absence of knowledge of a parametric form for the response function, one can incorporate monotonicity constraints to improve the efficiency of tests of association. This article proposes a general Bayesian approach for inference on order-constrained parameters in generalized linear models. Instead of choosing a prior distribution with support on the constrained space, which can result in ma...
Many psychological theories that are instantiated as statistical models imply order constraints on t...
This dissertation consists of five chapters with three distinct but related research projects. In Ch...
Summary. In the restricted parameter estimation, the use of exponential family have been introduced ...
In biomedical studies, there is often interest in assessing the association between one or more orde...
SUMMARY. In studying the relationship between an ordered categorical predictor and an event time, it...
In studying the relationship between an ordered categorical predictor and an event time, it is stand...
1 SUMMARY. In many applications, the mean of a response variable can be assumed to be a non-decreasi...
In some applications involving comparison of treatment means, it is known a priori that population m...
AbstractWe consider the problem of learning the parameters of a Bayesian network from data, while ta...
Association models include score parameters to multiplicatively represent the hierarchy between the ...
Association models include score parameters to multiplicatively represent the hierarchy between the ...
Bayesian model selection poses two main challenges: the specification of parameter priors for all mo...
Researchers often analyze data assuming models with constrained parameters. Order constrained parame...
Correlation coefficients play a key role in the social and behavioral Sciences for quantifying the d...
In this paper, ordered categorical variables are used to compare between linear and nonlinear intera...
Many psychological theories that are instantiated as statistical models imply order constraints on t...
This dissertation consists of five chapters with three distinct but related research projects. In Ch...
Summary. In the restricted parameter estimation, the use of exponential family have been introduced ...
In biomedical studies, there is often interest in assessing the association between one or more orde...
SUMMARY. In studying the relationship between an ordered categorical predictor and an event time, it...
In studying the relationship between an ordered categorical predictor and an event time, it is stand...
1 SUMMARY. In many applications, the mean of a response variable can be assumed to be a non-decreasi...
In some applications involving comparison of treatment means, it is known a priori that population m...
AbstractWe consider the problem of learning the parameters of a Bayesian network from data, while ta...
Association models include score parameters to multiplicatively represent the hierarchy between the ...
Association models include score parameters to multiplicatively represent the hierarchy between the ...
Bayesian model selection poses two main challenges: the specification of parameter priors for all mo...
Researchers often analyze data assuming models with constrained parameters. Order constrained parame...
Correlation coefficients play a key role in the social and behavioral Sciences for quantifying the d...
In this paper, ordered categorical variables are used to compare between linear and nonlinear intera...
Many psychological theories that are instantiated as statistical models imply order constraints on t...
This dissertation consists of five chapters with three distinct but related research projects. In Ch...
Summary. In the restricted parameter estimation, the use of exponential family have been introduced ...