Generalized Dirichlet distributions have a more flexible covariance structure than Dirichlet distributions, and the computation for the moments of a generalized Dirichlet distribution is still tractable. For situations under which Dirichlet distributions are inappropriate for data analysis, generalized Dirichlet distributions will generally be an applicable alternative. When the expected values and the covariance matrix of random variables can be estimated from available data, this study introduces ways to estimate the parameters of a generalized Dirichlet distribution for analyzing compositional data. Under the assumption that the sample mean of every variable must be considered for parameter estimation, we present methods for choosing the...
Thesis (PhD (Mathematical Statistics))--University of Pretoria, 2022.The Dirichlet distribution is a...
2The Dirichlet distribution, also known as multivariate beta, is the most used to analyse frequencie...
This thesis deals with the problem of estimating statistical distributions from data. In the first p...
The Dirichlet distribution is a well-known candidate in modeling compositional data sets. However, i...
The Dirichlet distribution appears in many areas of application, which include modelling of composit...
A generalized Dirichlet model is introduced which extends the standard real type-2 Dirichlet density...
<p>We develop a generalized method of moments (GMM) approach for fast parameter estimation in a new ...
This paper examines the Dirichlet model describing consumer behaviour. The model estimates brand per...
The Dirichlet family owes its privileged status within simplex distributions to easyness of interpre...
Compositional data are used in many applications such as Cement, Asphalt, and many other Chemical in...
The Dirichlet family owes its privileged status within simplex distributions to easynessof interpret...
This book focuses on the properties associated with the Dirichlet process, describing its use a prio...
The Dirichlet distribution is a well-known candidate in modeling compositional data sets. However, ...
Compositional data are non-negative proportions with unit-sum. These types of data arise whenever we...
This paper deals with a generalization of type-1 Dirichlet density by incorporating partial sums of ...
Thesis (PhD (Mathematical Statistics))--University of Pretoria, 2022.The Dirichlet distribution is a...
2The Dirichlet distribution, also known as multivariate beta, is the most used to analyse frequencie...
This thesis deals with the problem of estimating statistical distributions from data. In the first p...
The Dirichlet distribution is a well-known candidate in modeling compositional data sets. However, i...
The Dirichlet distribution appears in many areas of application, which include modelling of composit...
A generalized Dirichlet model is introduced which extends the standard real type-2 Dirichlet density...
<p>We develop a generalized method of moments (GMM) approach for fast parameter estimation in a new ...
This paper examines the Dirichlet model describing consumer behaviour. The model estimates brand per...
The Dirichlet family owes its privileged status within simplex distributions to easyness of interpre...
Compositional data are used in many applications such as Cement, Asphalt, and many other Chemical in...
The Dirichlet family owes its privileged status within simplex distributions to easynessof interpret...
This book focuses on the properties associated with the Dirichlet process, describing its use a prio...
The Dirichlet distribution is a well-known candidate in modeling compositional data sets. However, ...
Compositional data are non-negative proportions with unit-sum. These types of data arise whenever we...
This paper deals with a generalization of type-1 Dirichlet density by incorporating partial sums of ...
Thesis (PhD (Mathematical Statistics))--University of Pretoria, 2022.The Dirichlet distribution is a...
2The Dirichlet distribution, also known as multivariate beta, is the most used to analyse frequencie...
This thesis deals with the problem of estimating statistical distributions from data. In the first p...