Analysing and Predicting Micro-Location Patterns of Software Firms

28 Pages Posted: 6 Dec 2017 Last revised: 13 Dec 2017

See all articles by Jan Kinne

Jan Kinne

Centre for European Economic Research (ZEW)

Bernd Resch

University of Salzburg

Date Written: 2017


While the effects of non-geographic aggregation on inference are well studied in economics, research on geographic aggregation is rather scarce. This knowledge gap together with the use of aggregated spatial units in previous firm location studies result in a lack of understanding of firm location determinants at the microgeographic level. Suitable data for microgeographic location analysis has become available only recently through the emergence of Volunteered Geographic Information (VGI), especially the OpenStreetMap (OSM) project, and the increasing availability of official (open) geodata. In this paper, we use a comprehensive dataset of three million street-level geocoded firm observations to explore the location pattern of software firms in an Exploratory Spatial Data Analysis (ESDA). Based on the ESDA results, we develop a software firm location prediction model using Poisson regression and OSM data. Our findings demonstrate that the model yields plausible predictions and OSM data is suitable for microgeographic location analysis. Our results also show that non-aggregated data can be used to detect information on location determinants, which are superimposed when aggregated spatial units are analysed, and that some findings of previous firm location studies are not robust at the microgeographic level. However, we also conclude that the lack of high-resolution geodata on socio-economic population characteristics causes systematic prediction errors, especially in cities with diverse and segregated populations.

Keywords: Firm Location, Location Factors, Software Industry, Microgeography, OpenStreetMap (OSM), Prediction, Volunteered Geographic Information (VGI)

JEL Classification: R12, L86, R30

Suggested Citation

Kinne, Jan and Resch, Bernd, Analysing and Predicting Micro-Location Patterns of Software Firms (2017). ZEW - Centre for European Economic Research Discussion Paper No. 17-063, Available at SSRN: or

Jan Kinne (Contact Author)

Centre for European Economic Research (ZEW) ( email )

P.O. Box 10 34 43
L 7,1
D-68034 Mannheim, 68034

Bernd Resch

University of Salzburg ( email )

Akademiestra├če 26
Salzburg, Salzburg 5020

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