Modelling Spatial Autocorrelation in Spatial Interaction Data
32 Pages Posted: 6 Mar 2008
Date Written: December 12, 2007
Abstract
Spatial interaction models of the gravity type are widely used to model origin-destination flows. They draw attention to three types of variables to explain variation in spatial interactions across geographic space: variables that characterise an origin region of a flow, variables that characterise a destination region of a flow, and finally variables that measure the separation between origin and destination regions. This paper outlines and compares two approaches, the spatial econometric and the eigenfunction-based spatial filtering approach, to deal with the issue of spatial autocorrelation among flow residuals. An example using patent citation data that capture knowledge flows across 112 European regions serves to illustrate the application and the comparison of the two approaches.
Keywords: Spatial autocorrelation, spatial interaction models, eigenfunction-based spatial filtering, spatial econometrics
JEL Classification: C13, C31, R15
Suggested Citation: Suggested Citation
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