A relevant issue for validating models is the assessment of goodness-of-fit and related measures of predictive ability. When data are nominal, and specifically ordinal, the main problem is the absence of a standard paradigm as in the regression framework for residual variability; in fact, several measures have been proposed. In this contribution we explore fitting measures for ordinal data when these are modelled by a mixture distribution. Some new indexes are evaluated and a comparison with previous proposals is performed by means of simulated and real data sets
Kauermann G, Tutz G. Semi- and nonparametric modeling of ordinal data. JOURNAL OF COMPUTATIONAL AND ...
Ordinal regression models are commonly implemented for analysing an ordinal response variable as a f...
[[abstract]]Longitudinal ordinal responses are commonly analyzed in biomedical studies and are often...
A relevant issue for validating models is the assessment of goodness-of-fit and related measures of ...
A relevant issue for validating models is the assessment of goodness-of-fit and related measures of ...
Most traditional strategies of assessing the fit between a simulation's set of predictions (outputs)...
Literature on the models for ordinal variables grew very fast in the last decades and several propos...
Literature on the models for ordinal variables grew very fast in the last decades and several propos...
Literature on the models for ordinal variables grew very fast in the last decades and several propos...
A regression model is proposed for the analysis of an ordinal response variable depending on a set o...
A regression model is proposed for the analysis of an ordinal response variable depending on a set o...
One limitation in building empirically testable models in sociology is that many familiar statistica...
Ordinal regression models are commonly implemented for analysing an ordinal response variable as a f...
Abstract: In this paper, we explore and compare classical regression and ordinal data models when qu...
<p>Ordinal outcomes are common in scientific research and everyday practice, and we often rely on re...
Kauermann G, Tutz G. Semi- and nonparametric modeling of ordinal data. JOURNAL OF COMPUTATIONAL AND ...
Ordinal regression models are commonly implemented for analysing an ordinal response variable as a f...
[[abstract]]Longitudinal ordinal responses are commonly analyzed in biomedical studies and are often...
A relevant issue for validating models is the assessment of goodness-of-fit and related measures of ...
A relevant issue for validating models is the assessment of goodness-of-fit and related measures of ...
Most traditional strategies of assessing the fit between a simulation's set of predictions (outputs)...
Literature on the models for ordinal variables grew very fast in the last decades and several propos...
Literature on the models for ordinal variables grew very fast in the last decades and several propos...
Literature on the models for ordinal variables grew very fast in the last decades and several propos...
A regression model is proposed for the analysis of an ordinal response variable depending on a set o...
A regression model is proposed for the analysis of an ordinal response variable depending on a set o...
One limitation in building empirically testable models in sociology is that many familiar statistica...
Ordinal regression models are commonly implemented for analysing an ordinal response variable as a f...
Abstract: In this paper, we explore and compare classical regression and ordinal data models when qu...
<p>Ordinal outcomes are common in scientific research and everyday practice, and we often rely on re...
Kauermann G, Tutz G. Semi- and nonparametric modeling of ordinal data. JOURNAL OF COMPUTATIONAL AND ...
Ordinal regression models are commonly implemented for analysing an ordinal response variable as a f...
[[abstract]]Longitudinal ordinal responses are commonly analyzed in biomedical studies and are often...