This paper investigates the adequacy of the matrix exponential spatial specifications (MESS) as an alternative to the widely used spatial autoregressive models (SAR). To provide as complete a picture as possible, we extend the analysis to all the main spatial models governed by matrix exponentials comparing them with their spatial autoregressive counterparts. We propose a new implementation of Bayesian parameter estimation for the MESS model with vague prior distributions, which is shown to be precise and computationally efficient. Our implementations also account for spatially lagged regressors. We further allow for location-specific heterogeneity, which we model by including spatial splines. We conclude by comparing the performances of the different model specifications in applications to a real data set and by running simulations. Both the applications and the simulations suggest that the spatial splines are a flexible and efficient way to account for spatial heterogeneities governed by unknown mechanisms.

Is a matrix exponential specification suitable for the modeling of spatial correlation structures? / M.E. Strauß, M. Mezzetti, S. Leorato. - In: SPATIAL STATISTICS. - ISSN 2211-6753. - 20:(2017 May), pp. 221-243. [10.1016/j.spasta.2017.04.003]

Is a matrix exponential specification suitable for the modeling of spatial correlation structures?

S. Leorato
2017

Abstract

This paper investigates the adequacy of the matrix exponential spatial specifications (MESS) as an alternative to the widely used spatial autoregressive models (SAR). To provide as complete a picture as possible, we extend the analysis to all the main spatial models governed by matrix exponentials comparing them with their spatial autoregressive counterparts. We propose a new implementation of Bayesian parameter estimation for the MESS model with vague prior distributions, which is shown to be precise and computationally efficient. Our implementations also account for spatially lagged regressors. We further allow for location-specific heterogeneity, which we model by including spatial splines. We conclude by comparing the performances of the different model specifications in applications to a real data set and by running simulations. Both the applications and the simulations suggest that the spatial splines are a flexible and efficient way to account for spatial heterogeneities governed by unknown mechanisms.
Covariance matrix; Matrix exponential; Spatial correlation; Statistics and Probability; Computers in Earth Sciences; Management, Monitoring, Policy and Law
Settore SECS-S/01 - Statistica
Settore SECS-P/05 - Econometria
mag-2017
27-apr-2017
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/613780
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