A recent thread of research in ordinal data analysis involves a class of mixture models that designs the responses as the combination of the two main aspects driving the decision pro- cess: a feeling and an uncertainty components. This novel paradigm has been proven flexible to account also for overdispersion. In this context, Groebner bases are exploited to estimate model parameters by implementing the method of moments. In order to strengthen the validity of the moment procedure so derived, alternatives parameter estimates are tested by means of a simulation experiment. Results show that the moment estimators are satisfactory per se, and that they significantly reduce the bias and perform more efficiently than others when they are set as ...
In CUB models the uncertainty of choice is explicitly modelled as a Combination of discrete Uniform ...
In classical mixture models for ordinal data with an uncertainty component the uniform distribution ...
A latent Gaussian mixture model to classify ordinal data is proposed. The observed categorical varia...
A recent thread of research in ordinal data analysis involves a class of mixture models that designs...
In this article, we present the command cub, which fits ordinal rating data using combination of uni...
In several applied disciplines, as Economics, Marketing, Business, Sociology, Psychology, Political ...
In rating surveys, people are requested to express preferences on several aspects related to a topic...
In this article we introduce a probability distribution generated by a mixture of discrete random va...
The paper describes a mixture distribution generated by Beta Binomial and Uniform random variables t...
In CUB models the uncertainty of choice is explicitly modelled as a Combination of discrete Uniform ...
We describe an intuitive, simple, and systematic approach to generating moment conditions for genera...
Subjective perceptions and attitudes are usually measured by administeringquestionnaires with ordere...
The paper is framed within the literature around Louis’ identity for the observed information matrix...
We describe an intuitive, simple, and systematic approach to generating moment conditions for genera...
In CUB models the uncertainty of choice is explicitly modelled as a Combination of discrete Uniform ...
In classical mixture models for ordinal data with an uncertainty component the uniform distribution ...
A latent Gaussian mixture model to classify ordinal data is proposed. The observed categorical varia...
A recent thread of research in ordinal data analysis involves a class of mixture models that designs...
In this article, we present the command cub, which fits ordinal rating data using combination of uni...
In several applied disciplines, as Economics, Marketing, Business, Sociology, Psychology, Political ...
In rating surveys, people are requested to express preferences on several aspects related to a topic...
In this article we introduce a probability distribution generated by a mixture of discrete random va...
The paper describes a mixture distribution generated by Beta Binomial and Uniform random variables t...
In CUB models the uncertainty of choice is explicitly modelled as a Combination of discrete Uniform ...
We describe an intuitive, simple, and systematic approach to generating moment conditions for genera...
Subjective perceptions and attitudes are usually measured by administeringquestionnaires with ordere...
The paper is framed within the literature around Louis’ identity for the observed information matrix...
We describe an intuitive, simple, and systematic approach to generating moment conditions for genera...
In CUB models the uncertainty of choice is explicitly modelled as a Combination of discrete Uniform ...
In classical mixture models for ordinal data with an uncertainty component the uniform distribution ...
A latent Gaussian mixture model to classify ordinal data is proposed. The observed categorical varia...