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Thissen, M., de Graaff, T. and van Oort, F.G. (2016). Competitive network positions in trade and structural economic growth: A geographically weighted regression analysis for European regions Papers in Regional Science, 95(1):159--180.


  • Journal
    Papers in Regional Science

In this paper, we introduce network dependence in European regional growth analyses in two new ways. First, we use detailed trade-flow data across European regions to decompose regional economic growth into two components: demand-led growth due to growing export markets and structural growth due to growing market shares in those export markets. Only structural growth, constituting on average approximately 20 per cent of total growth, is potentially affected by regionally varying locational characteristics. The second network novelty we introduce is revealed competition as a measure of regional network membership in the growth analysis. Applying a neo-classical regional growth model using geographically weighted regression, we show that the degree of revealed competition in trade and services between sectors moderates regional structural growth. Regions operating on similar international markets share more favourable structural growth prospects, with locational determinants being more - albeit still limited - significant due to similar externalities. With regional characteristics being of limited sectoral and geographical importance for structural growth, our results suggest that the recently advocated place-based development strategies of European regions should be complemented with competitive regional network strategies.