dirty spatial econometrics

Giuseppe Arbia, Giuseppe Espa, Diego Giuliani

Research output: Contribution to journalArticlepeer-review

10 Citations (Scopus)

Abstract

Spatial data are often contaminated with a series of imperfections that reduce their quality and can dramatically distort the inferential conclusions based on spatial econometric modeling. A "clean" ideal situation considered in standard spatial econometrics textbooks is when we fit Cliff-Ord-type models to data where the spatial units constitute the full population, there are no missing data and there is no uncertainty on the spatial observations that are free from measurement and locational errors. Unfortunately in practical cases the reality is often very different and the datasets contain all sorts of imperfections: they are often based on a sample drawn from the whole population, some data are missing and they almost invariably contain both attribute and locational errors. This is a situation of "dirty" spatial econometric modelling. Through a series of Monte Carlo experiments, this paper considers the effects on spatial econometric model estimation and hypothesis testing of two specific sources of dirt, namely missing data and locational errors.
Original languageEnglish
Pages (from-to)177-189
Number of pages13
JournalTHE ANNALS OF REGIONAL SCIENCE
Volume2016
DOIs
Publication statusPublished - 2016

Keywords

  • geo-masking
  • missing data
  • missing location
  • spatial impact
  • spatial regression

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