Model-based market segmentation analyses often involve an ordinal dependent variable as ordinal responses are frequently collected in marketing research. In the Bayesian segmentation literature, there are models for an interval- or ratio-scaled dependent variable but there is not any general model for an ordinal dependent variable. In this manuscript, the authors propose a new Bayesian procedure to simultaneously perform segmentation and ordinal regression with variable selection within each derived segment. The procedure is robust to outliers and it also provides an option to include concomitant variables that allows the simultaneous profiling of the derived segments. The authors demonstrate that the practice of treating ordinal responses ...
Finite Mixture models are a state-of-the-art technique of segmentation. Next tosegmenting consumers ...
IFCS 2011 Symposium of the International Federation of Classification Societies (IFCS), August 30, 2...
This paper considers the fitting, criticism and comparison of three ordinal regression models -- the...
Model-based market segmentation analyses often involve an ordinal dependent variable as ordinal resp...
Survey data collected for market segmentation studies is typically ordinal in nature. As such, it is...
The Marketing literature has shown how difficult it is to profile market segments derived with finit...
The Marketing literature has shown how difficult it is to profile market segments derived with finit...
Doctor of PhilosophyDepartment of StatisticsPaul NelsonPanels of judges are often used to estimate c...
Bayesian computational statistics, Model based clustering, Log-linear modeling, Market segmentation,...
Mixture models are used in many fields to identify different sources of uncertainty. Market demand i...
<p>Univariate or multivariate ordinal responses are often assumed to arise from a latent continuous ...
adopt model-based (MB) methods in market segmentation (MS) may stem from an insufficient awareness o...
Tuma MN, Decker R. Finite Mixture Models in Market Segmentation: A Review and Suggestions for Best P...
This dissertation deals with two basic problems in marketing, that are market segmentation, which is...
Ordinal responses in the form of ratings arise frequently in social sciences, marketing and business...
Finite Mixture models are a state-of-the-art technique of segmentation. Next tosegmenting consumers ...
IFCS 2011 Symposium of the International Federation of Classification Societies (IFCS), August 30, 2...
This paper considers the fitting, criticism and comparison of three ordinal regression models -- the...
Model-based market segmentation analyses often involve an ordinal dependent variable as ordinal resp...
Survey data collected for market segmentation studies is typically ordinal in nature. As such, it is...
The Marketing literature has shown how difficult it is to profile market segments derived with finit...
The Marketing literature has shown how difficult it is to profile market segments derived with finit...
Doctor of PhilosophyDepartment of StatisticsPaul NelsonPanels of judges are often used to estimate c...
Bayesian computational statistics, Model based clustering, Log-linear modeling, Market segmentation,...
Mixture models are used in many fields to identify different sources of uncertainty. Market demand i...
<p>Univariate or multivariate ordinal responses are often assumed to arise from a latent continuous ...
adopt model-based (MB) methods in market segmentation (MS) may stem from an insufficient awareness o...
Tuma MN, Decker R. Finite Mixture Models in Market Segmentation: A Review and Suggestions for Best P...
This dissertation deals with two basic problems in marketing, that are market segmentation, which is...
Ordinal responses in the form of ratings arise frequently in social sciences, marketing and business...
Finite Mixture models are a state-of-the-art technique of segmentation. Next tosegmenting consumers ...
IFCS 2011 Symposium of the International Federation of Classification Societies (IFCS), August 30, 2...
This paper considers the fitting, criticism and comparison of three ordinal regression models -- the...