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The impact of spatial aggregation on urban development analyses
This paper illustrates the impacts of spatial data aggregation on the analysis of urban development. Spatial econometric methods are used to control for spatial autocorrelation in the data and existing weighting methods are used to overcome aggregation dependencies that are due to differences in siz...
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Published in: | Applied geography (Sevenoaks) 2014-02, Vol.47, p.46-56 |
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creator | Jacobs-Crisioni, Chris Rietveld, Piet Koomen, Eric |
description | This paper illustrates the impacts of spatial data aggregation on the analysis of urban development. Spatial econometric methods are used to control for spatial autocorrelation in the data and existing weighting methods are used to overcome aggregation dependencies that are due to differences in sizes of areal units. The analyses show that shape dependencies can be partially removed by the used weighting methods, and that even regularly latticed areal units need such weighting in practice. Aggregating to coarser resolutions does not affect the order of magnitude of coefficients estimated for variables that are aggregated by averaging, if the aggregation process maintains sufficient variance within variables. We argue that small-sized areal units approximating the true characteristics of the studied process are to be preferred in urban development analyses, because such micro-data allows the exploration of highly local factors alongside higher scale linkages. We demonstrate that spatial autocorrelation and scale dependencies interact and that spatial econometric methods can help explain variance in analyses of small-grained land-use data.
•We look into scale and shape dependencies in spatial land-use pattern analyses.•Spatial econometric and weighting methods are used to lessen aggregation impacts.•Scale has a limited effect on explanatory analyses with factors on various scales.•Spatial econometric methods are needed in particular with fine resolution data.•Shape dependencies can partially be reduced with weighting methods. |
doi_str_mv | 10.1016/j.apgeog.2013.11.014 |
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subjects | Agglomeration Approximation Autocorrelation Econometric analysis Geography Impact analysis Land use MAUP Scale dependencies Spatial econometrics Urban development Weighting methods |
title | The impact of spatial aggregation on urban development analyses |
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