Growth in regions, knowledge bases and relatedness: some insights from the Italian case
Niccolò Innocenti and
Luciana Lazzeretti
European Planning Studies, 2019, vol. 27, issue 10, 2034-2048
Abstract:
The present work uses an evolutionary economic geography framework to contribute to the literature on the combinatorial dimension of differentiated knowledge bases (DKB). The aim is to determine if there is a pattern of knowledge creation that does not rely on one specific knowledge base, and if the three knowledge bases require the presence of other related sectors to exploit their innovative capacity leading to the growth of the region. We apply Hidalgo, Klinger, Barabási, and Hausmann’s [2007. The product space conditions the development of nations. Science, 317(5837), 482–487.] methodology of a revealed relatedness measure between sectors, thus measuring the relatedness between the three KB and the relatedness of each KB with all other sectors (outside). The results show how, at the local level, the sectors characterized by synthetic and symbolic knowledge bases in the presence of other sectors with a high degree of relatedness are able to increase the employment growth of the area.
Date: 2019
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Persistent link: https://EconPapers.repec.org/RePEc:taf:eurpls:v:27:y:2019:i:10:p:2034-2048
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DOI: 10.1080/09654313.2019.1588862
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