Over the last decades, linear models have been studied by the scientific community as an important tool of statistical modelling in a great variety of phenomena. However, in many situations the data are grouped according to factors, so the introduction of random effects is required in order to consider the correlation between observations from the same individual, in which case linear mixed models are used. In addition, it is often observed that the data comes from a heterogeneous population, giving rise to situations where the estimation of a single linear model is not sufficient. Therefore, it is necessary to use models that incorporate this unobserved heterogeneity, as is the case of mixture models. Thus, mixtures of linear mixed mode...
This paper is concerned with an important issue in finite mixture modelling, the selection of the nu...
Finite mixture models are a widely known method for modelling data that arise from a heterogeneous p...
Mixture models occur in numerous settings including random and fixed effects models, clustering, dec...
Finite mixture models can adequately model population heterogeneity when this heterogeneity arises f...
In this article, a new approach for model specification is proposed. The method allows to choose the...
Finite mixtures of regression models with random effects are a very flexible statistical tool to mod...
The consistent estimation of mixture complexity is of fundamental importance in many applications of...
In this paper, we investigate a robust estimation of the number of components in the mixture of regr...
Finite mixtures of probability distributions may be successfully used in the modeling of probability...
Mixture regression model has been proven to be a useful tool in the study of heterogeneous populatio...
Despite the popularity of mixture regression models, the decision of how many components to retain r...
TEZ5510Tez (Yüksek Lisans) -- Çukurova Üniversitesi, Adana, 2005.Kaynakça (s. 100-106) var.xi, 107 s...
October 2012This paper considers likelihood-based testing of the null hypothesis of m0 components ag...
Master of ScienceDepartment of StatisticsWeixin YaoIn this report, we investigate a robust estimatio...
<div><p>Identifying the number of classes in Bayesian finite mixture models is a challenging problem...
This paper is concerned with an important issue in finite mixture modelling, the selection of the nu...
Finite mixture models are a widely known method for modelling data that arise from a heterogeneous p...
Mixture models occur in numerous settings including random and fixed effects models, clustering, dec...
Finite mixture models can adequately model population heterogeneity when this heterogeneity arises f...
In this article, a new approach for model specification is proposed. The method allows to choose the...
Finite mixtures of regression models with random effects are a very flexible statistical tool to mod...
The consistent estimation of mixture complexity is of fundamental importance in many applications of...
In this paper, we investigate a robust estimation of the number of components in the mixture of regr...
Finite mixtures of probability distributions may be successfully used in the modeling of probability...
Mixture regression model has been proven to be a useful tool in the study of heterogeneous populatio...
Despite the popularity of mixture regression models, the decision of how many components to retain r...
TEZ5510Tez (Yüksek Lisans) -- Çukurova Üniversitesi, Adana, 2005.Kaynakça (s. 100-106) var.xi, 107 s...
October 2012This paper considers likelihood-based testing of the null hypothesis of m0 components ag...
Master of ScienceDepartment of StatisticsWeixin YaoIn this report, we investigate a robust estimatio...
<div><p>Identifying the number of classes in Bayesian finite mixture models is a challenging problem...
This paper is concerned with an important issue in finite mixture modelling, the selection of the nu...
Finite mixture models are a widely known method for modelling data that arise from a heterogeneous p...
Mixture models occur in numerous settings including random and fixed effects models, clustering, dec...