4.3 Article

Random effects specifications in eigenvector spatial filtering: a simulation study

期刊

JOURNAL OF GEOGRAPHICAL SYSTEMS
卷 17, 期 4, 页码 311-331

出版社

SPRINGER HEIDELBERG
DOI: 10.1007/s10109-015-0213-7

关键词

Eigenvector spatial filtering; Mixed effects model; Geostatistics; Spatial econometrics; Spatial confounding

资金

  1. Japan Society for the Promotion of Science
  2. Global Climate Risk Management Strategies project [S10]

向作者/读者索取更多资源

Eigenvector spatial filtering (ESF) is becoming a popular way to address spatial dependence. Recently, a random effects specification of ESF (RE-ESF) is receiving considerable attention because of its usefulness for spatial dependence analysis considering spatial confounding. The objective of this study was to analyze theoretical properties of RE-ESF and extend it to overcome some of its disadvantages. We first compare the properties of RE-ESF and ESF with geostatistical and spatial econometric models. There, we suggest two major disadvantages of RE-ESF: it is specific to its selected spatial connectivity structure, and while the current form of RE-ESF eliminates the spatial dependence component confounding with explanatory variables to stabilize the parameter estimation, the elimination can yield biased estimates. RE-ESF is extended to cope with these two problems. A computationally efficient residual maximum likelihood estimation is developed for the extended model. Effectiveness of the extended RE-ESF is examined by a comparative Monte Carlo simulation. The main findings of this simulation are as follows: Our extension successfully reduces errors in parameter estimates; in many cases, parameter estimates of our RE-ESF are more accurate than other ESF models; the elimination of the spatial component confounding with explanatory variables results in biased parameter estimates; efficiency of an accuracy maximization-based conventional ESF is comparable to RE-ESF in many cases.

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