<div><p>A flexible semiparametric odds ratio model has been proposed to unify and to extend both the log-linear model and the joint normal model for data with a mix of discrete and continuous variables. The semiparametric odds ratio model is particularly useful for analyzing biased sampling designs. However, statistical inference of the model has not been systematically studied when more than one nonparametric component is involved in the model. In this article, we study the maximum semiparametric likelihood approach to estimation and inference of the semiparametric odds ratio model. We show that the maximum semiparametric likelihood estimator of the odds ratio parameter is consistent and asymptotically normally distributed. We also establi...
We propose a semiparametric proportional likelihood ratio model which is particularly suitable for m...
Bayesian posterior odds ratios for frequently encountered hypotheses about parameters of the normal ...
In this thesis, we contribute to the growing literature on the Evidential methodology for genetic as...
Marginal likelihood and conditional likelihood are often used for eliminating nuisance parameters. F...
The properties of four commonly used estimators of the odds ratio are studied under a large-sample s...
We consider likelihood based inference in a class of logistic models for case-control studies with a...
AbstractWe consider likelihood based inference in a class of logistic models for case- control studi...
We consider misclassified binary data with a validation substudy. For such data various methods have...
An important problem in logistic regression modeling is the existence of the maximum likelihood esti...
We consider large sample inference in a semiparametric logistic/proportional-hazards mixture model. ...
In many applications, we collect independent samples from interconnected populations. These populati...
Hjort & Claeskens (2003) developed an asymptotic theory for model selection, model averaging and sub...
In presence of completely or quasi-completely separated data, the maximum likelihood estimates for t...
Although the asymptotic distributions of the likelihood ratio for testing hypotheses of null varianc...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/90947/1/semiparametric_likelihood_ratio...
We propose a semiparametric proportional likelihood ratio model which is particularly suitable for m...
Bayesian posterior odds ratios for frequently encountered hypotheses about parameters of the normal ...
In this thesis, we contribute to the growing literature on the Evidential methodology for genetic as...
Marginal likelihood and conditional likelihood are often used for eliminating nuisance parameters. F...
The properties of four commonly used estimators of the odds ratio are studied under a large-sample s...
We consider likelihood based inference in a class of logistic models for case-control studies with a...
AbstractWe consider likelihood based inference in a class of logistic models for case- control studi...
We consider misclassified binary data with a validation substudy. For such data various methods have...
An important problem in logistic regression modeling is the existence of the maximum likelihood esti...
We consider large sample inference in a semiparametric logistic/proportional-hazards mixture model. ...
In many applications, we collect independent samples from interconnected populations. These populati...
Hjort & Claeskens (2003) developed an asymptotic theory for model selection, model averaging and sub...
In presence of completely or quasi-completely separated data, the maximum likelihood estimates for t...
Although the asymptotic distributions of the likelihood ratio for testing hypotheses of null varianc...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/90947/1/semiparametric_likelihood_ratio...
We propose a semiparametric proportional likelihood ratio model which is particularly suitable for m...
Bayesian posterior odds ratios for frequently encountered hypotheses about parameters of the normal ...
In this thesis, we contribute to the growing literature on the Evidential methodology for genetic as...