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Structural Equation Models for Dealing With Spatial Confounding

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Version 2 2018-03-21, 14:28
Version 1 2017-03-30, 20:09
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posted on 2018-03-21, 14:28 authored by Hauke Thaden, Thomas Kneib

In regression analyses of spatially structured data, it is common practice to introduce spatially correlated random effects into the regression model to reduce or even avoid unobserved variable bias in the estimation of other covariate effects. If besides the response the covariates are also spatially correlated, the spatial effects may confound the effect of the covariates or vice versa. In this case, the model fails to identify the true covariate effect due to multicollinearity. For highly collinear continuous covariates, path analysis and structural equation modeling techniques prove to be helpful to disentangle direct covariate effects from indirect covariate effects arising from correlation with other variables. This work discusses the applicability of these techniques in regression setups, where spatial and covariate effects coincide at least partly and classical geoadditive models fail to separate these effects. Supplementary materials for this article are available online.

Funding

The authors acknowledge financial support by the German Research Foundation (DFG), research training group 1644 Scaling Problems in Statistics.

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