This chapter proposes a regression model for multivariate continuous variables with bounded support by taking into consideration the flexible Dirichlet (FD) distribution that can be interpreted as a special mixture of Dirichlet distributions. The FD distribution is an extension of the Dirichlet one, which is contained as an inner point, and it enables a greater variety of density shapes in terms of tail behavior, asymmetry and multimodality. The chapter describes the FD regression (FDReg) model for compositional data. It provides details on a Bayesian approach to inference suitable for the FDReg model. Inferential issues are dealt with by a (Bayesian) Hamiltonian Monte Carlo algorithm. The chapter illustrates several simulation studies that have been performed to evaluate the behavior of the proposed regression model.

A Flexible Mixture Regression Model for Bounded Multivariate Responses

Di Brisco, Agnese M.
;
2021-01-01

Abstract

This chapter proposes a regression model for multivariate continuous variables with bounded support by taking into consideration the flexible Dirichlet (FD) distribution that can be interpreted as a special mixture of Dirichlet distributions. The FD distribution is an extension of the Dirichlet one, which is contained as an inner point, and it enables a greater variety of density shapes in terms of tail behavior, asymmetry and multimodality. The chapter describes the FD regression (FDReg) model for compositional data. It provides details on a Bayesian approach to inference suitable for the FDReg model. Inferential issues are dealt with by a (Bayesian) Hamiltonian Monte Carlo algorithm. The chapter illustrates several simulation studies that have been performed to evaluate the behavior of the proposed regression model.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11579/127371
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