Generalized Spatial Regression with Differential Regularization
Author(s)
Sangalli, Laura M.
Date issued
May 10, 2016
In
Journal of Statistical Computation and Simulation
Vol
13
No
86
From page
2497
To page
2518
Reviewed by peer
1
Abstract
We propose a method for the analysis of data scattered over a spatial irregularly shaped domain and having a distribution within the exponential family. This is a generalized additive model for spatially distributed data. The model is fitted by maximizing a penalized log-likelihood function with a roughness penalty term that involves a differential operator of the spatial field over the domain of interest. Efficient spatial field estimation is achieved resorting to the finite element method, which provides a basis for piecewise polynomial surfaces. The method is illustrated by an application to the study of criminality in the city of Portland, Oregon, USA.
Publication type
journal article
