Estimating Spatially Disaggregated Data by Entropy Econometrics: An Exercise of Ecological Inference for Income in Spain

2013 
The availability of geographically disaggregated data, especially referred to the urban and metropolitan areas, is a growing need not only for academic studies in the field of economics but also for policy makers. However, in many cases the degree of disaggregation of official statistics does not allow to have information at a desirable level. In this paper a methodology to approximate highly-disaggregated data for the Spanish economy using entropy econometrics is proposed. The paper illustrates how the procedure works taking as empirical application the estimation of income for the Spanish municipalities classified according to their size. An evaluation of the estimates is presented by a simulation exercise and by comparing our results with previous estimates obtained by statistical agencies using more information-intensive estimation techniques. Our results suggest that entropy estimators could be considered as an alternative for recovering disaggregated economic data from aggregate figures, given that the errors seem relatively low.
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