4.7 Article

Bayesian Inference for Finite Mixture Regression Model Based on Non-Iterative Algorithm

Journal

MATHEMATICS
Volume 9, Issue 6, Pages -

Publisher

MDPI
DOI: 10.3390/math9060590

Keywords

finite mixture regression; non-iterative sampling; missing data; Gibbs sampling; EM algorithm

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Funding

  1. National Science Foundation of Shandong province of China [ZR2019MA026]

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A non-iterative sampling algorithm for fitting FMNR models is proposed in this paper, which can generate independently and identically distributed samples from the posterior distributions of the parameters and produce more reliable estimations than the EM algorithm and Gibbs sampling. Simulation studies and real data analysis support the effectiveness of the methodology.
Finite mixtures normal regression (FMNR) models are widely used to investigate the relationship between a response variable and a set of explanatory variables from several unknown latent homogeneous groups. However, the classical EM algorithm and Gibbs sampling to deal with this model have several weak points. In this paper, a non-iterative sampling algorithm for fitting FMNR model is proposed from a Bayesian perspective. The procedure can generate independently and identically distributed samples from the posterior distributions of the parameters and produce more reliable estimations than the EM algorithm and Gibbs sampling. Simulation studies are conducted to illustrate the performance of the algorithm with supporting results. Finally, a real data is analyzed to show the usefulness of the methodology.

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