A linear regression solution to the spatial autocorrelation problem

被引:19
作者
Griffith D.A. [1 ,2 ]
机构
[1] Department of Geography, Interdisciplinary Statistics Program, Syracuse University, Syracuse
[2] Natl. Agric. Statistics Service, Fairfax, VA
关键词
Eigenfunction; Geographic weights matrix; Georeferenced data; Spatial autocorrelation; Spatial autoregression;
D O I
10.1007/PL00011451
中图分类号
学科分类号
摘要
The Moran Coefficient spatial autocorrelation index can be decomposed into orthogonal map pattern components. This decomposition relates it directly to standard linear regression, in which corresponding eigenvectors can be used as predictors. This paper reports comparative results between these linear regressions and their auto-Gaussian counterparts for the following georeferenced data sets: Columbus (Ohio) crime, Ottawa-Hull median family income, Toronto population density, southwest Ohio unemployment, Syracuse pediatric lead poisoning, and Glasgow standard mortality rates, and a small remotely sensed image of the High Peak district. This methodology is extended to auto-logistic and auto-Poisson situations, with selected data analyses including percentage of urban population across Puerto Rico, and the frequency of SIDs cases across North Carolina. These data analytic results suggest that this approach to georeferenced data analysis offers considerable promise.
引用
收藏
页码:141 / 156
页数:15
相关论文
共 25 条
[1]  
Anselin L., Spatial Econometrics, (1988)
[2]  
Bailey T., Gatrell A., Interactive Spatial Data Analysis, (1995)
[3]  
Barry R., Pace R., Quick computation of spatial autoregressive estimators, Geographical Analysis, 29, pp. 232-247, (1997)
[4]  
Conlon E., Waller L., Flexible neighborhood structures in hierarchical models for disease mapping, Biometrics, (1999)
[5]  
Cressie N., Statistics for Spatial Data, (1991)
[6]  
Curry L., A spatial analysis of gravity flows, Regional Studies, 6, pp. 131-147, (1972)
[7]  
De Jong P., Sprenger C., Van Veen F., On extreme values of Moran's I and Geary's c, Geographical Analysis, 16, pp. 17-24, (1984)
[8]  
Getis A., Spatial filtering in a regression framework, New Directions in Spatial Econometrics, pp. 172-185, (1995)
[9]  
Griffith D., Measuring the arrangement property of a system of areal units generated by partitioning a planar surface, Recent Developments in Spatial Analysis. Methodology, Measurement, Models, pp. 191-200, (1984)
[10]  
Griffith D., Estimating missing values in spatial urban census data, Operational Geographer, 10, 2, pp. 23-26, (1992)