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Published in: The Annals of Regional Science 1/2016

28-11-2015 | Original Paper

Dirty spatial econometrics

Authors: Giuseppe Arbia, Giuseppe Espa, Diego Giuliani

Published in: The Annals of Regional Science | Issue 1/2016

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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 modeling. 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.

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Literature
go back to reference Anselin L (1988) Spatial econometrics: methods and models. Kluwer Academic, DordrechtCrossRef Anselin L (1988) Spatial econometrics: methods and models. Kluwer Academic, DordrechtCrossRef
go back to reference Arbia G (2006) Spatial econometrics: statistical foundations and applications to regional convergence. Springer, Heidelberg Arbia G (2006) Spatial econometrics: statistical foundations and applications to regional convergence. Springer, Heidelberg
go back to reference Arbia G (2014) A primer for spatial econometrics. Palgrave MacMillan, BasingstokeCrossRef Arbia G (2014) A primer for spatial econometrics. Palgrave MacMillan, BasingstokeCrossRef
go back to reference Baltagi BH, Egger PH, Pfaffermayr M (2007) Estimating models of complex FDI: are there third-country effects? J Econom 140:260–281CrossRef Baltagi BH, Egger PH, Pfaffermayr M (2007) Estimating models of complex FDI: are there third-country effects? J Econom 140:260–281CrossRef
go back to reference Bennett RJ, Haining RP, Griffith DA (1984) The problem of missing data on spatial surfaces. Ann Assoc Am Geogr 74(1):138–156CrossRef Bennett RJ, Haining RP, Griffith DA (1984) The problem of missing data on spatial surfaces. Ann Assoc Am Geogr 74(1):138–156CrossRef
go back to reference Cliff AD, Ord JK (1972) Spatial autocorrelation. Pion, London Cliff AD, Ord JK (1972) Spatial autocorrelation. Pion, London
go back to reference Collins B (2011) Boundary respecting point displacement. Python Script, Blue Raster LLC, Arlington Collins B (2011) Boundary respecting point displacement. Python Script, Blue Raster LLC, Arlington
go back to reference Cozzi M, Filipponi D (2012) The new geospatial Business Register of Local Units: potentiality and application areas. In: 3rd Meeting of the Wiesbaden Group on Business Registers-International Roundtable on Business Survey Frames, Washington, DC, 17–20 September 2012 Cozzi M, Filipponi D (2012) The new geospatial Business Register of Local Units: potentiality and application areas. In: 3rd Meeting of the Wiesbaden Group on Business Registers-International Roundtable on Business Survey Frames, Washington, DC, 17–20 September 2012
go back to reference Cressie N, Wilke CK (2011) Statistics for spatio-temporal data. Wiley, Hoboken Cressie N, Wilke CK (2011) Statistics for spatio-temporal data. Wiley, Hoboken
go back to reference Dempster AP, Laird NM, Rubin DB (1977) Maximum likelihood from incomplete data via the EM algorithm. JRSS Ser B 39(1):1–38 Dempster AP, Laird NM, Rubin DB (1977) Maximum likelihood from incomplete data via the EM algorithm. JRSS Ser B 39(1):1–38
go back to reference Deuchert E, Wunsch C (2014) Evaluating nationwide health interventions: Malawi’s insecticide-treated-net distribution programme. J R Stat Soc A 177(Part 2):523–552CrossRef Deuchert E, Wunsch C (2014) Evaluating nationwide health interventions: Malawi’s insecticide-treated-net distribution programme. J R Stat Soc A 177(Part 2):523–552CrossRef
go back to reference Flores-Lagunes A, Schnier KE (2012) Estimation of sample selection models with spatial dependence. J Appl Econom 27:173–204CrossRef Flores-Lagunes A, Schnier KE (2012) Estimation of sample selection models with spatial dependence. J Appl Econom 27:173–204CrossRef
go back to reference Griffith DA, Bennett RJ, Haining RP (1989) Statistical analysis of spatial data in the presence of missing observations: a methodological guide and an application to urban census data. Environ Plan A 21(11):1511–1523CrossRef Griffith DA, Bennett RJ, Haining RP (1989) Statistical analysis of spatial data in the presence of missing observations: a methodological guide and an application to urban census data. Environ Plan A 21(11):1511–1523CrossRef
go back to reference Kelejian HH, Prucha IR (2010) Spatial models with spatially lagged dependent variables and incomplete data. J Geogr Syst 12:241–257CrossRef Kelejian HH, Prucha IR (2010) Spatial models with spatially lagged dependent variables and incomplete data. J Geogr Syst 12:241–257CrossRef
go back to reference Kelejian HH, Prucha IR (2007) HAC estimation in a spatial framework. J Econom 140:131–154CrossRef Kelejian HH, Prucha IR (2007) HAC estimation in a spatial framework. J Econom 140:131–154CrossRef
go back to reference LeSage J, Pace RK (2009) Introduction to spatial econometrics. Chapman and Hall/CRC, Boca RatonCrossRef LeSage J, Pace RK (2009) Introduction to spatial econometrics. Chapman and Hall/CRC, Boca RatonCrossRef
go back to reference Little RJA (1988) Missing-data adjustments in large surveys. J Bus Econ Stat 6(3):287–296 Little RJA (1988) Missing-data adjustments in large surveys. J Bus Econ Stat 6(3):287–296
go back to reference Little RJA, Rubin DB (2002) Statistical analysis with missing data, 2nd edn. Wiley, Hoboken Little RJA, Rubin DB (2002) Statistical analysis with missing data, 2nd edn. Wiley, Hoboken
go back to reference Pffafermayr M (2013) The Cliff and Ord test for spatial correlation of the disturbances in unbalanced panel models. Int Reg Sci Rev 36:492–506CrossRef Pffafermayr M (2013) The Cliff and Ord test for spatial correlation of the disturbances in unbalanced panel models. Int Reg Sci Rev 36:492–506CrossRef
go back to reference Rubin DB (1987) Multiple imputation for nonresponse in surveys. Wiley, New YorkCrossRef Rubin DB (1987) Multiple imputation for nonresponse in surveys. Wiley, New YorkCrossRef
go back to reference USAID (2013) Geographical displacement procedure and georeferences data release policy for the demographic and health surveys. DHS Spatial Analysis Report, 7 September 2013 USAID (2013) Geographical displacement procedure and georeferences data release policy for the demographic and health surveys. DHS Spatial Analysis Report, 7 September 2013
Metadata
Title
Dirty spatial econometrics
Authors
Giuseppe Arbia
Giuseppe Espa
Diego Giuliani
Publication date
28-11-2015
Publisher
Springer Berlin Heidelberg
Published in
The Annals of Regional Science / Issue 1/2016
Print ISSN: 0570-1864
Electronic ISSN: 1432-0592
DOI
https://doi.org/10.1007/s00168-015-0726-5

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