For most of the time, biomedical researchers have been dealing with ordinal outcome variable in multilevel models where patients are nested in doctors. We can justifiably apply multilevel cumulative logit model, where the outcome variable represents the mild, severe, and extremely severe intensity of diseases like malaria and typhoid in the form of ordered categories. Based on our simulation conditions, Maximum Likelihood (ML) method is better than Penalized Quasilikelihood (PQL) method in three-category ordinal outcome variable. PQL method, however, performs equally well as ML method where five-category ordinal outcome variable is used. Further, to achieve power more than 0.80, at least 50 groups are required for both ML and PQL methods of...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...
There are a number of regression models which are widely used to predict ordinal outcomes. The commo...
The most familiar reason to use the LOGISTIC procedure is to model binary (yes/no, 1/0) categorical ...
Previous research has compared methods of estimation for fitting multilevel models to binary data, b...
Previous research has compared methods of estimation for multilevel models fit to binary data but th...
Educational researchers, psychologists, social, epidemiological and medical scientists are often dea...
Statistical modeling of multilevel data has been in discussion for several years and many developmen...
Statistical modeling of multilevel data has been in discussion for several years and many developmen...
Multinomial Logistic Regression (MLR) has been advocated for developing clinical prediction models t...
The ordinal logistic regression models are used to analyze the dependant variable with multiple outc...
Ordinal variables are very often objects of study in health sciences. However, due to the lack of di...
Abstract Background Many studies conducted in health ...
Ordinal variables are very often objects of study in health sciences. However, due to the lack of di...
Abstract Background Many studies conducted in health ...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...
There are a number of regression models which are widely used to predict ordinal outcomes. The commo...
The most familiar reason to use the LOGISTIC procedure is to model binary (yes/no, 1/0) categorical ...
Previous research has compared methods of estimation for fitting multilevel models to binary data, b...
Previous research has compared methods of estimation for multilevel models fit to binary data but th...
Educational researchers, psychologists, social, epidemiological and medical scientists are often dea...
Statistical modeling of multilevel data has been in discussion for several years and many developmen...
Statistical modeling of multilevel data has been in discussion for several years and many developmen...
Multinomial Logistic Regression (MLR) has been advocated for developing clinical prediction models t...
The ordinal logistic regression models are used to analyze the dependant variable with multiple outc...
Ordinal variables are very often objects of study in health sciences. However, due to the lack of di...
Abstract Background Many studies conducted in health ...
Ordinal variables are very often objects of study in health sciences. However, due to the lack of di...
Abstract Background Many studies conducted in health ...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...
There are a number of regression models which are widely used to predict ordinal outcomes. The commo...
The most familiar reason to use the LOGISTIC procedure is to model binary (yes/no, 1/0) categorical ...