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Abstract

Administrative regions do not necessarily correspond to areas that are homogenous in terms of innovation intensity. Although this has been recognized in the literature, quantitative evidence that explicitly considers this problem is rare. Using spatial exploratory analysis on detailed regional data derived from a census of R&D performers in the Czech Republic, we identify local spatial clusters of R&D activities and assess the extent of their (mis)match with administrative borders. Overall, the results support the arguments for regionalization of innovation policy. However, the existing policy units do not appear well suited for this purpose. On one hand, there is a need for policy coordination between multiple administrative regions. On the other hand, however, there are diverse patterns within them. Similar problems are likely to haunt the regionalization process in many other countries, which is alarming, as the regional accent of innovation policies becomes ever more vehement over time.

Acknowledgements

We are grateful to the Czech Statistical Office for providing access to the confidential microdata, in particular the help of Martin Mana with constructing the regional data-set is highly appreciated. Financial support from the Czech Science Foundation (GAČR) project P402/10/2310 on “Innovation, productivity and policy: What can we learn from micro data?” and institutional support RVO 67985998 from the Academy of Sciences of the Czech Republic are gratefully acknowledged. An earlier version of this paper was presented at the 6th International Seminar on Regional Innovation Policies, Lund, 13–14 October 2011 and the GAČR project interim workshop, Prague, 10 January 2012. We thank participants at the these events, in particular Martin Andersson and Jiří Blažek, for comments. All usual caveats apply.

 

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