We consider the problem of spatially dependent areal data, where for each area independent observations are available, and propose to model the density of each area through a finite mixture of Gaussian distributions. The spatial dependence is introduced via a novel joint distribution for a collection of vectors in the simplex, that we term logisticMCAR. We show that salient features of the logisticMCAR distribution can be described analytically, and that a suitable augmentation scheme based on the Pólya-Gamma identity allows to derive an efficient Markov Chain Monte Carlo algorithm. When compared to competitors, our model has proved to better estimate densities in different (disconnected) areal locations when they have different characteristics. We discuss an application on a real dataset of Airbnb listings in the city of Amsterdam, also showing how to easily incorporate for additional covariate information in the model.

Beraha, M., Pegoraro, M., Peli, R., Guglielmi, A. (2021). Spatially dependent mixture models via the logistic multivariate CAR prior. SPATIAL STATISTICS, 46, 1-35 [10.1016/j.spasta.2021.100548].

Spatially dependent mixture models via the logistic multivariate CAR prior

Beraha, M;
2021

Abstract

We consider the problem of spatially dependent areal data, where for each area independent observations are available, and propose to model the density of each area through a finite mixture of Gaussian distributions. The spatial dependence is introduced via a novel joint distribution for a collection of vectors in the simplex, that we term logisticMCAR. We show that salient features of the logisticMCAR distribution can be described analytically, and that a suitable augmentation scheme based on the Pólya-Gamma identity allows to derive an efficient Markov Chain Monte Carlo algorithm. When compared to competitors, our model has proved to better estimate densities in different (disconnected) areal locations when they have different characteristics. We discuss an application on a real dataset of Airbnb listings in the city of Amsterdam, also showing how to easily incorporate for additional covariate information in the model.
Articolo in rivista - Articolo scientifico
Airbnb; Finite mixture models; Logistic normal; Multivariate CAR models; Pólya-gamma augmentation; Spatial density estimation;
English
2021
46
1
35
100548
partially_open
Beraha, M., Pegoraro, M., Peli, R., Guglielmi, A. (2021). Spatially dependent mixture models via the logistic multivariate CAR prior. SPATIAL STATISTICS, 46, 1-35 [10.1016/j.spasta.2021.100548].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/545390
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