The presentation deals with effect measures for covariates in ordinal data models to address the interpretation of the results on the extreme categories of the scales. It provides a simpler interpretation than model parameters both in standard cumulative models with proportional odds assumption and in the recent extension of the CUP models, the mixture models to account for uncertainty in the process of selection of the score. Visualization tools for the effect of covariates are proposed and the measure of relative size and marginal effects based on rates of change are evaluated by use of a case study
Many assessment instruments used in the evaluation of toxicity, safety, pain, or disease progression...
Many assessment instruments used in the evaluation of toxicity, safety, pain, or disease progression...
Thesis (Ph.D.)--University of Washington, 2014In this thesis, I propose new models for clustered dat...
The presentation deals with effect measures for covariates in ordinal data models to address the int...
This contribution deals with effect measures for covariates in ordinal data models to address the in...
This contribution deals with effect measures for covariates in ordinal data models to address the in...
This article deals with ordinal effect measures in the cup models. They are mixture models for ordin...
We survey effect measures for models for ordinal categorical data that can be simpler to interpre...
In CUB models the uncertainty of choice is explicitly modelled as a Combination of discrete Uniform ...
This chapter is devoted to regression models for ordinal responses with special emphasis on random e...
In CUB models the uncertainty of choice is explicitly modelled as a Combination of discrete Uniform ...
We present a class of multivariate regression models for ordinal response variables in which the coe...
In this paper, we consider the analysis of models for univariate and multivariate ordinal outcomes i...
The so-called proportional odds assumption is popular in cumulative, ordinal regression. In practice...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
Many assessment instruments used in the evaluation of toxicity, safety, pain, or disease progression...
Many assessment instruments used in the evaluation of toxicity, safety, pain, or disease progression...
Thesis (Ph.D.)--University of Washington, 2014In this thesis, I propose new models for clustered dat...
The presentation deals with effect measures for covariates in ordinal data models to address the int...
This contribution deals with effect measures for covariates in ordinal data models to address the in...
This contribution deals with effect measures for covariates in ordinal data models to address the in...
This article deals with ordinal effect measures in the cup models. They are mixture models for ordin...
We survey effect measures for models for ordinal categorical data that can be simpler to interpre...
In CUB models the uncertainty of choice is explicitly modelled as a Combination of discrete Uniform ...
This chapter is devoted to regression models for ordinal responses with special emphasis on random e...
In CUB models the uncertainty of choice is explicitly modelled as a Combination of discrete Uniform ...
We present a class of multivariate regression models for ordinal response variables in which the coe...
In this paper, we consider the analysis of models for univariate and multivariate ordinal outcomes i...
The so-called proportional odds assumption is popular in cumulative, ordinal regression. In practice...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
Many assessment instruments used in the evaluation of toxicity, safety, pain, or disease progression...
Many assessment instruments used in the evaluation of toxicity, safety, pain, or disease progression...
Thesis (Ph.D.)--University of Washington, 2014In this thesis, I propose new models for clustered dat...