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Spatial Clustering Regression of Count Value Data via Bayesian Mixture of Finite Mixtures

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arxiv 2002.06678 v2 pith:5X4HY2HK submitted 2020-02-16 stat.ME stat.APstat.CO

Spatial Clustering Regression of Count Value Data via Bayesian Mixture of Finite Mixtures

classification stat.ME stat.APstat.CO
keywords regressioncoefficientsdatafinitemarkovmethodmixturemixtures
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Investigating relationships between response variables and covariates in areas such as environmental science, geoscience, and public health is an important endeavor. Based on a Bayesian mixture of finite mixtures model, we present a novel spatially clustered coefficients regression model for count value data. The proposed method detects the spatial homogeneity of the Poisson regression coefficients. A Markov random field constrained mixture of finite mixtures prior provides a regularized estimator of the number of clusters of regression coefficients with geographical neighborhood information. As a by-product, we also provide the theoretical properties of our proposed method when the Markov random field is exchangeable. An efficient Markov chain Monte Carlo algorithm is developed by using the multivariate log gamma distribution as a base distribution. Simulation studies are carried out to examine the empirical performance of the proposed method. Additionally, we analyze Georgia's premature death data as an illustration of the effectiveness of our approach. The supplementary materials are provided on GitHub at \url{https://github.com/pengzhaostat/MLG_MFM}.

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