Estimation in Truncated GLG Model for Ordered Categorical Spatial Data Using the SAEM Algorithm |
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Authors: | Marjan Kaveh |
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Affiliation: | Department of Statistics, Tarbiat Modares University, Tehran, Iran |
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Abstract: | In this article, we utilize a scale mixture of Gaussian random field as a tool for modeling spatial ordered categorical data with non-Gaussian latent variables. In fact, we assume a categorical random field is created by truncating a Gaussian Log-Gaussian latent variable model to accommodate heavy tails. Since the traditional likelihood approach for the considered model involves high-dimensional integrations which are computationally intensive, the maximum likelihood estimates are obtained using a stochastic approximation expectation–maximization algorithm. For this purpose, Markov chain Monte Carlo methods are employed to draw from the posterior distribution of latent variables. A numerical example illustrates the methodology. |
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Keywords: | Categorical response MCMC Outlier SAEM algorithm Scale mixing |
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