Semiparametric finite mixture of regression models with Bayesian P-splines

Author:

Berrettini MarcoORCID,Galimberti GiulianoORCID,Ranciati SaverioORCID

Abstract

AbstractMixture models provide a useful tool to account for unobserved heterogeneity and are at the basis of many model-based clustering methods. To gain additional flexibility, some model parameters can be expressed as functions of concomitant covariates. In this Paper, a semiparametric finite mixture of regression models is defined, with concomitant information assumed to influence both the component weights and the conditional means. In particular, linear predictors are replaced with smooth functions of the covariate considered by resorting to cubic splines. An estimation procedure within the Bayesian paradigm is suggested, where smoothness of the covariate effects is controlled by suitable choices for the prior distributions of the spline coefficients. A data augmentation scheme based on difference random utility models is exploited to describe the mixture weights as functions of the covariate. The performance of the proposed methodology is investigated via simulation experiments and two real-world datasets, one about baseball salaries and the other concerning nitrogen oxide in engine exhaust.

Funder

Alma Mater Studiorum - Università di Bologna

Publisher

Springer Science and Business Media LLC

Subject

Applied Mathematics,Computer Science Applications,Statistics and Probability

Reference61 articles.

1. Berrettini M, Galimberti G, Ranciati S, Murphy TB (2021) Flexible Bayesian modelling of concomitant covariate effects in mixture models. arXiv preprint arXiv:2105.12852

2. Bitto A, Frühwirth-Schnatter S (2019) Achieving shrinkage in a time-varying parameter model framework. J Econom 210(1):75–97

3. Brezger A, Lang S (2006) Generalized structured additive regression based on Bayesian P-splines. Comput Stat Data Anal 50(4):967–991

4. Brinkman ND (1981) Ethanol fuel-single-cylinder engine study of efficiency and exhaust emissions. SAE Trans 90:1410–1424

5. Cadonna A, Frühwirth-Schnatter S, Knaus P (2020) Triple the gamma: a unifying shrinkage prior for variance and variable selection in sparse state space and TVP models. Econometrics 8(2):20

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