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Published in: The Annals of Regional Science 3/2022

02-12-2021 | Original Paper

Knowledge networks in joint research projects, innovation and economic growth across European regions

Authors: Valentina Meliciani, Daniela Di Cagno, Andrea Fabrizi, Marco Marini

Published in: The Annals of Regional Science | Issue 3/2022

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Abstract

This paper investigates the role played by the position of European regions in research networks on their rate of innovation and economic growth. The analysis is based on a panel of EU-28 NUTS2 regions participating in EU Framework Programmes observed over the 2004–2014 period. We find that regions that are more central in the network (higher strength centrality) and those that are surrounded by highly inter-connected regions (higher clustering index) show higher rates of innovation and higher economic growth. We also find heterogeneous effects of centrality and clustering for peripheral and central regions. We conclude that a more interconnected network (an increase in centrality for peripheral regions and of clustering for urban areas) would create benefits both at the periphery and at the core of Europe.

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Appendix
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Footnotes
1
In particular, several empirical studies have examined the nature and the determinants of scientific cooperations among firms (Hagerdoon 2000; 2002; Miotti and Sachwald 2003; Caloghirou et al. 2006) or between firms and universities (Geuna 1998; Hayashi 2003; Laursen and Salter 2004; Arundel and Geuna 2004; Fontana et al. 2006; D’Este et al. 2011).
 
2
For a discussion of the game theoretic literature on the private incentives to cooperate in R&D, see Cassiman and Veugelers (2002).
 
3
Ertur and Koch (2006); Artelaris et al. (2010); Chapman and Meliciani (2018);
 
4
Rodríguez‐Pose (1999); Chapman and Meliciani (2012, 2017); Meliciani (2016).
 
5
Socio-economic clusters are based on Rodríguez-Pose (1998), who classifies EU-12 regions into four groups: (1) capital and urban areas, (2) regions affected by industrial decline, (3) intermediate regions and (4) peripheral regions, and on Chapman and Meliciani (2012), who extend this classification to the countries that joined the EU later (EU-27).
 
6
Di Cagno et al. (2014), using data from a panel of European countries participating in FP over the 1994–2005 period, find participation in EU funded projects helps laggard countries to reduce a part of their economic gap with more advanced countries (Macdissi and Negassi 2002 for France; Medda et al. 2006 for Italy).
 
7
See both the literature on endogenous economic growth, e.g. Aghion and Howitt (1992); Grossman and Helpman (1994) and evolutionary models, e.g. Nelson and Winter (1982); Fagerberg (1994).
 
9
In terms of funding allocated, the most important issues are health, energy, transport, environment and, in the most recent FPs, climate change.
 
10
The NUTS classification subdivides the economic territory of the Member States. It ascribes to each territorial unit (NUTS) a specific code and name. The NUTS classification is hierarchical. It subdivides each Member State into NUTS level 1 territorial units, each of which is subdivided into NUTS level 2 territorial units, which in turn are subdivided into NUTS level 3 territorial units (source: REGULATION (EC) No 1059/2003).
 
11
The most used indexes of centrality in the literature to analyse networks are degree, strength, closeness, betweenness and eigenvector (Barrat 2004 for a review). Degree simply denotes the number of neighbours of the node (region in our analysis). Strength is the extension for the weighted networks. Closeness centrality represents the closeness of a given node with every other node of the network. Betweenness centrality measures the ability of the node occupying a critical gate-keeping position to act as an intermediary. Betweenness centrality of a given node is based on the number of shortest paths passing through the node. Eigenvector centrality is used to measure the influence of a node in the network. It assigns a relative index value to all nodes in the network based on the concept that connections with high indexed nodes contribute more to the score of the node than the connections with low indexed nodes (Saxena and Iyengar 2020). Given the strong positive correlation found for the centrality indices, we decided to use only one and the choice fell on strength both for its simplicity and because it takes into account both the connectivity (the number of connection of a node) as well as the intensity of the ties, measured by the weights of the edges.
 
12
We observe, as in other real-world networks, a negative correlation between the strength centrality and the local clustering coefficient (Table 8 in the appendix). As pointed out by Opsahl and Panzarasa (2009), a node with more neighbours is likely to be embedded in relatively fewer closed triplets and therefore to have a smaller local clustering than a node connected to fewer neighbours.
 
13
Time span of the analysis and the number of regions (nuts2) is influenced by the availability of EUROSTAT data.
 
14
Country dummies are included also in the specifications which include class dummies. In fact, some countries have levels of innovation that are higher than those experienced in other countries irrespective of the socio-economic group the region belongs too.
 
15
The GDP of the NUTS2 region variables has been deflated using the corresponding national GDP deflator (2010 = 100).
 
16
For details on how to implement this procedure, see Hole (2006).
 
17
We thank an anonymous referee for pointing this out.
 
18
In Appendix 1, Tables 9 and 10 report the estimates of Tables 4 and 5 without considering the intermediate group dummy and EU15 countries’ dummy, which are taken as a base level. This allows to statically test the respective coefficient differences of the groups.
 
Literature
go back to reference Aghion P, Howitt P (1992) A model of growth through creative destruction. Econometrica 60(2):323–351 CrossRef Aghion P, Howitt P (1992) A model of growth through creative destruction. Econometrica 60(2):323–351 CrossRef
go back to reference Artelaris P, Kallioras D, Petrakos G (2010) Regional inequalities and convergence clubs in the European Union new member-states. East J Eur Stud 1(1):113–133 Artelaris P, Kallioras D, Petrakos G (2010) Regional inequalities and convergence clubs in the European Union new member-states. East J Eur Stud 1(1):113–133
go back to reference Arundel A, Geuna A (2004) Proximity and the use of public science by innovative European firms. Econ Innov New Technol 13(6):559–580 CrossRef Arundel A, Geuna A (2004) Proximity and the use of public science by innovative European firms. Econ Innov New Technol 13(6):559–580 CrossRef
go back to reference Autant-Bernard C, Mairesse J, Massard N (2007) Spatial knowledge diffusion through collaborative networks. Pap Reg Sci 86(3):341–350 CrossRef Autant-Bernard C, Mairesse J, Massard N (2007) Spatial knowledge diffusion through collaborative networks. Pap Reg Sci 86(3):341–350 CrossRef
go back to reference Balland PA, Boschma R, Crespo J, Rigby DL (2019) Smart specialization policy in the European union: relatedness, knowledge complexity and regional diversification. Reg Stud 53(9):1252–1268 CrossRef Balland PA, Boschma R, Crespo J, Rigby DL (2019) Smart specialization policy in the European union: relatedness, knowledge complexity and regional diversification. Reg Stud 53(9):1252–1268 CrossRef
go back to reference Barrat A, Barthélemy M, Vespignani A (2004) Modeling the evolution of weighted networks. Phys Rev E 70(6):066149 CrossRef Barrat A, Barthélemy M, Vespignani A (2004) Modeling the evolution of weighted networks. Phys Rev E 70(6):066149 CrossRef
go back to reference Bottazzi L, Peri G (2003) Innovation and spillovers in regions: evidence from European patent data. Eur Econ Rev 47:687–710 CrossRef Bottazzi L, Peri G (2003) Innovation and spillovers in regions: evidence from European patent data. Eur Econ Rev 47:687–710 CrossRef
go back to reference Breschi S, Cusmano L (2004) Unveiling the texture of a European research area: emergence of oligarchic networks under EU framework programmes. Int J Technol Manage 27(8):747–772 CrossRef Breschi S, Cusmano L (2004) Unveiling the texture of a European research area: emergence of oligarchic networks under EU framework programmes. Int J Technol Manage 27(8):747–772 CrossRef
go back to reference Breschi S, Lissoni F (2009) Mobility of skilled workers and co-invention networks: an anatomy of localized knowledge flows. J Econ Geogr 9(4):439–468 CrossRef Breschi S, Lissoni F (2009) Mobility of skilled workers and co-invention networks: an anatomy of localized knowledge flows. J Econ Geogr 9(4):439–468 CrossRef
go back to reference Brökel T, Balland PA, Burger M, van Oort F (2014) Modeling knowledge networks in economic geography: a discussion of four methods. Ann Reg Sci 53:423–452 CrossRef Brökel T, Balland PA, Burger M, van Oort F (2014) Modeling knowledge networks in economic geography: a discussion of four methods. Ann Reg Sci 53:423–452 CrossRef
go back to reference Butts CT (2008) Social network analysis: a methodological introduction. Asian J Soc Psychol 11(1):13–41 CrossRef Butts CT (2008) Social network analysis: a methodological introduction. Asian J Soc Psychol 11(1):13–41 CrossRef
go back to reference Cassi L, Plunket A (2014) Proximity, network formation and inventive performance: in search of the proximity paradox. Ann Reg Sci 53(2):395–422 CrossRef Cassi L, Plunket A (2014) Proximity, network formation and inventive performance: in search of the proximity paradox. Ann Reg Sci 53(2):395–422 CrossRef
go back to reference Cassiman B, Veugelers R (2002) R&D cooperation and spillovers: some empirical evidence from Belgium. Am Econ Rev 92(4):1169–1184 CrossRef Cassiman B, Veugelers R (2002) R&D cooperation and spillovers: some empirical evidence from Belgium. Am Econ Rev 92(4):1169–1184 CrossRef
go back to reference Caloghirou Y, Constantelou A, Vonortas N (Eds.). (2006). Knowledge flows in European industry. Routledge Caloghirou Y, Constantelou A, Vonortas N (Eds.). (2006). Knowledge flows in European industry. Routledge
go back to reference Chapman SA, Meliciani V (2012) Income Disparities in the Enlarged EU: socio-economic, specialisation and geographical clusters. Tijdschr Econ Soc Geogr 103(3):293–311 CrossRef Chapman SA, Meliciani V (2012) Income Disparities in the Enlarged EU: socio-economic, specialisation and geographical clusters. Tijdschr Econ Soc Geogr 103(3):293–311 CrossRef
go back to reference Chapman S, Meliciani V (2017) Behind the pan-european converge path: the role of innovation, specialization and socio-economic factors. Growth Chang 48(1):61–90 CrossRef Chapman S, Meliciani V (2017) Behind the pan-european converge path: the role of innovation, specialization and socio-economic factors. Growth Chang 48(1):61–90 CrossRef
go back to reference Chapman S, Meliciani V (2018) Explaining regional disparities in central and Eastern Europe: the role of geography and of structural change. Econ Transit 26(3):469–494 CrossRef Chapman S, Meliciani V (2018) Explaining regional disparities in central and Eastern Europe: the role of geography and of structural change. Econ Transit 26(3):469–494 CrossRef
go back to reference Cheshir PC, Hay DG (1989) Urban problems in Western Europe: an economic analysis. Unwin Hyman, London Cheshir PC, Hay DG (1989) Urban problems in Western Europe: an economic analysis. Unwin Hyman, London
go back to reference Cincera M, Pottelsberghe V, de la Potterie B (2001) International R&D spillovers: a survey. Cahiers Econ De Brux 169(1er trimestre):3–32 Cincera M, Pottelsberghe V, de la Potterie B (2001) International R&D spillovers: a survey. Cahiers Econ De Brux 169(1er trimestre):3–32
go back to reference Cisi M, Devicienti F, Manello A, Vannoni D (2020) The advantages of formalizing networks: new evidence from Italian SMEs. Small Bus Econ 54(4):1183–1200 CrossRef Cisi M, Devicienti F, Manello A, Vannoni D (2020) The advantages of formalizing networks: new evidence from Italian SMEs. Small Bus Econ 54(4):1183–1200 CrossRef
go back to reference Cowan R, Jonard N (2004) Network structure and the diffusion of knowledge. J Econ Dyn Control 28(8):1557–1575 CrossRef Cowan R, Jonard N (2004) Network structure and the diffusion of knowledge. J Econ Dyn Control 28(8):1557–1575 CrossRef
go back to reference Crescenzi R, Rodriguez-Pose A (2011) Innovation and regional growth in the European Union, Advances in spatial science. Springer, Berlin, Germany CrossRef Crescenzi R, Rodriguez-Pose A (2011) Innovation and regional growth in the European Union, Advances in spatial science. Springer, Berlin, Germany CrossRef
go back to reference D’Este P, Perkmann M (2011) Why do academics engage with industry? The entrepreneurial university and individual motivations. J Technol Transf 36(3):316–339 CrossRef D’Este P, Perkmann M (2011) Why do academics engage with industry? The entrepreneurial university and individual motivations. J Technol Transf 36(3):316–339 CrossRef
go back to reference Di Cagno D, Fabrizi A, Meliciani V (2014) The impact of participation in European joint research projects on knowledge creation and economic growth. J Technol Transf 39:836–858 CrossRef Di Cagno D, Fabrizi A, Meliciani V (2014) The impact of participation in European joint research projects on knowledge creation and economic growth. J Technol Transf 39:836–858 CrossRef
go back to reference Di Cagno D, Fabrizi A, Meliciani V, Wanzenböck I (2016) The impact of relational spillovers from joint research projects on knowledge creation across European regions. Technol Forecast Soc Chang 108:83–94 CrossRef Di Cagno D, Fabrizi A, Meliciani V, Wanzenböck I (2016) The impact of relational spillovers from joint research projects on knowledge creation across European regions. Technol Forecast Soc Chang 108:83–94 CrossRef
go back to reference Duranton G, Puga D (2005) From sectoral to functional urban specialisation. J Urban Econ 57(2):343–370 CrossRef Duranton G, Puga D (2005) From sectoral to functional urban specialisation. J Urban Econ 57(2):343–370 CrossRef
go back to reference Ertur C, Koch W (2006) Regional disparities in the European Union and the enlargement process: an exploratory spatial data analysis, 1995–2000. Ann Reg Sci 40:721–765 CrossRef Ertur C, Koch W (2006) Regional disparities in the European Union and the enlargement process: an exploratory spatial data analysis, 1995–2000. Ann Reg Sci 40:721–765 CrossRef
go back to reference Evangelista R, Lucchese M, Meliciani V (2013) Business services, innovation and sectoral growth. Struct Chang Econ Dyn 25:119–132 CrossRef Evangelista R, Lucchese M, Meliciani V (2013) Business services, innovation and sectoral growth. Struct Chang Econ Dyn 25:119–132 CrossRef
go back to reference Fagerberg J (1994) Technology and international differences in growth rates. J Econ Lit 32(3):1147–1175 Fagerberg J (1994) Technology and international differences in growth rates. J Econ Lit 32(3):1147–1175
go back to reference Fontana R, Geuna A, Matt M (2006) Factors affecting university–industry R&D projects: the importance of searching, screening and signalling. Res Policy 35(2):309–323 CrossRef Fontana R, Geuna A, Matt M (2006) Factors affecting university–industry R&D projects: the importance of searching, screening and signalling. Res Policy 35(2):309–323 CrossRef
go back to reference Frenken K, Hoekman J (2006) Convergence in an enlarged Europe: the role of network cities. Tijdschr Econ Soc Geogr 97(3):321–326 CrossRef Frenken K, Hoekman J (2006) Convergence in an enlarged Europe: the role of network cities. Tijdschr Econ Soc Geogr 97(3):321–326 CrossRef
go back to reference Geuna A (1998) Determinants of university participation in EU-funded R&D cooperative projects. Res Policy 26(6):677–687 CrossRef Geuna A (1998) Determinants of university participation in EU-funded R&D cooperative projects. Res Policy 26(6):677–687 CrossRef
go back to reference Grossman GM, Helpman E (1994) Endogenous innovation in the theory of growth. J Econ Perspect 8(1):23–44 CrossRef Grossman GM, Helpman E (1994) Endogenous innovation in the theory of growth. J Econ Perspect 8(1):23–44 CrossRef
go back to reference Guan J, Zhao Q (2013) The impact of university–industry collaboration networks on innovation in nanobiopharmaceuticals. Technol Forecast Soc Change 80(7):1271–1286 CrossRef Guan J, Zhao Q (2013) The impact of university–industry collaboration networks on innovation in nanobiopharmaceuticals. Technol Forecast Soc Change 80(7):1271–1286 CrossRef
go back to reference Guan J, Zhang J, Yan Y (2015) The impact of multilevel networks on innovation. Res Policy 44(3):545–559 CrossRef Guan J, Zhang J, Yan Y (2015) The impact of multilevel networks on innovation. Res Policy 44(3):545–559 CrossRef
go back to reference Gulati R, Higgins MC (2003) Which ties matter when? The contingent effects of interorganizational partnerships on IPO success. Strateg Manag J 24(2):127–144 CrossRef Gulati R, Higgins MC (2003) Which ties matter when? The contingent effects of interorganizational partnerships on IPO success. Strateg Manag J 24(2):127–144 CrossRef
go back to reference Hagerdoon J, Link AN, Vonortas NS (2000) Research partnerships. Res Policy 29(4–5):567–586 Hagerdoon J, Link AN, Vonortas NS (2000) Research partnerships. Res Policy 29(4–5):567–586
go back to reference Hagerdoon J (2002) Inter-Firm R&D partnerships: an overview of major trends and patterns since 1960. Res Policy 31:477–492 CrossRef Hagerdoon J (2002) Inter-Firm R&D partnerships: an overview of major trends and patterns since 1960. Res Policy 31:477–492 CrossRef
go back to reference Hayashi T (2003) Effect of R&D programmes on the formation of university–industry–government networks: comparative analysis of Japanese R&D programmes. Res Policy 32(8):1421–1442 CrossRef Hayashi T (2003) Effect of R&D programmes on the formation of university–industry–government networks: comparative analysis of Japanese R&D programmes. Res Policy 32(8):1421–1442 CrossRef
go back to reference Hall BH, Mairesse J, Mohnen P (2010) Measuring the returns to R&D, NBER Working Papers 15622, National Bureau of Economic Research, Inc Hall BH, Mairesse J, Mohnen P (2010) Measuring the returns to R&D, NBER Working Papers 15622, National Bureau of Economic Research, Inc
go back to reference Harvey D (1985) Consciousness and the urban experience: studies in the history and theory of capitalist urbanization (Vol. 1). Johns Hopkins University Press Harvey D (1985) Consciousness and the urban experience: studies in the history and theory of capitalist urbanization (Vol. 1). Johns Hopkins University Press
go back to reference Havnes PA, Senneseth K (2001) A Panel Study of Firm growth among SMEs in networks. Small Bus Econ 16(4):293–302 CrossRef Havnes PA, Senneseth K (2001) A Panel Study of Firm growth among SMEs in networks. Small Bus Econ 16(4):293–302 CrossRef
go back to reference Hazir C, Autant-Bernard C (2014) Determinants of crossregional R&D collaboration: some empirical evidence from European biotechnology. Ann Reg Sci 53(2):369–393 CrossRef Hazir C, Autant-Bernard C (2014) Determinants of crossregional R&D collaboration: some empirical evidence from European biotechnology. Ann Reg Sci 53(2):369–393 CrossRef
go back to reference Hoekman J, Frenken K, Van Oort F (2009) The geography of collaborative knowledge production in Europe. Ann Reg Sci 43(3):721–738 CrossRef Hoekman J, Frenken K, Van Oort F (2009) The geography of collaborative knowledge production in Europe. Ann Reg Sci 43(3):721–738 CrossRef
go back to reference Hoekman J, Scherngell T, Frenken K, Tijssen R (2013) Acquisition of European research funds and its effect on international scientific collaboration. J Econ Geogr 13:23–52 CrossRef Hoekman J, Scherngell T, Frenken K, Tijssen R (2013) Acquisition of European research funds and its effect on international scientific collaboration. J Econ Geogr 13:23–52 CrossRef
go back to reference Hole AR (2006) Calculating Murphy-Topel variance estimates in stata: a simplified procedure. Stata Journal 6:521–529 CrossRef Hole AR (2006) Calculating Murphy-Topel variance estimates in stata: a simplified procedure. Stata Journal 6:521–529 CrossRef
go back to reference Jaffee AB, Trajtenberg M, Henderson R (1993) Geographic localization of knowledge spillovers as evidenced by patent citations. Quart J Econ 108:577–598 CrossRef Jaffee AB, Trajtenberg M, Henderson R (1993) Geographic localization of knowledge spillovers as evidenced by patent citations. Quart J Econ 108:577–598 CrossRef
go back to reference Jaffee AB, Trajtenberg M (1999) International knowledge flows: evidence from patent citations. Econ Innov New Technol 8(1–2):105–136 CrossRef Jaffee AB, Trajtenberg M (1999) International knowledge flows: evidence from patent citations. Econ Innov New Technol 8(1–2):105–136 CrossRef
go back to reference Le Gallo J, Ertur C (2003) Exploratory spatial data analysis of the distribution of regional per capita GDP in Europe, 1980–1995. Pap Reg Sci 82(2):175–201 CrossRef Le Gallo J, Ertur C (2003) Exploratory spatial data analysis of the distribution of regional per capita GDP in Europe, 1980–1995. Pap Reg Sci 82(2):175–201 CrossRef
go back to reference Laursen K, Salter A (2004) Searching high and low: what types of firms use universities as a source of innovation? Res Policy 33(8):1201–1215 CrossRef Laursen K, Salter A (2004) Searching high and low: what types of firms use universities as a source of innovation? Res Policy 33(8):1201–1215 CrossRef
go back to reference Lechner C, Dowling M, Welpe I (2006) Firm networks and firm development: the role of the relational mix. J Bus Ventur 21(4):514–540 CrossRef Lechner C, Dowling M, Welpe I (2006) Firm networks and firm development: the role of the relational mix. J Bus Ventur 21(4):514–540 CrossRef
go back to reference López-Bazo E, Vayá E, Mora AJ, Suriñach J (1999) Regional economic dynamics and convergence in the European Union. Ann Reg Sci 33(3):343–370 CrossRef López-Bazo E, Vayá E, Mora AJ, Suriñach J (1999) Regional economic dynamics and convergence in the European Union. Ann Reg Sci 33(3):343–370 CrossRef
go back to reference Macdissi C, Negassi S (2002) International R&D spillovers: an empirical study. Econ Innov New Technol 11(2):77–91 CrossRef Macdissi C, Negassi S (2002) International R&D spillovers: an empirical study. Econ Innov New Technol 11(2):77–91 CrossRef
go back to reference Maggioni MA, Nosvelli M, Uberti TE (2007) Space versus networks in the geography of innovation: a European analysis. Pap Reg Sci 86(3):271–293 CrossRef Maggioni MA, Nosvelli M, Uberti TE (2007) Space versus networks in the geography of innovation: a European analysis. Pap Reg Sci 86(3):271–293 CrossRef
go back to reference Maggioni M, Uberti TE (2009) Knowledge networks across Europe: which distance matters? Ann Reg Sci 43:691–720 CrossRef Maggioni M, Uberti TE (2009) Knowledge networks across Europe: which distance matters? Ann Reg Sci 43:691–720 CrossRef
go back to reference Maggioni M, Uberti TE (2011) Networks and geography in the economics of knowledge flows. Qual Quant 45:1031–1051 CrossRef Maggioni M, Uberti TE (2011) Networks and geography in the economics of knowledge flows. Qual Quant 45:1031–1051 CrossRef
go back to reference Maggioni MA, Breschi S, Panzarasa P (2013) Multiplexity, growth mechanisms and structural variety in scientific collaboration networks. Ind Innov 20(3):185–194 CrossRef Maggioni MA, Breschi S, Panzarasa P (2013) Multiplexity, growth mechanisms and structural variety in scientific collaboration networks. Ind Innov 20(3):185–194 CrossRef
go back to reference Maggioni MA, Uberti TE, Nosvelli M (2014) Does intentional mean hierarchical? Knowledge flows and innovative performance of European regions. Ann Reg Sci 53(2):453–485 CrossRef Maggioni MA, Uberti TE, Nosvelli M (2014) Does intentional mean hierarchical? Knowledge flows and innovative performance of European regions. Ann Reg Sci 53(2):453–485 CrossRef
go back to reference Maggioni MA, Uberti TE, Nosvelli M (2017) The “Political” geography of research networks: FP6 whithin a" two speed" ERA. Int Reg Sci Rev 40(4):337–376 CrossRef Maggioni MA, Uberti TE, Nosvelli M (2017) The “Political” geography of research networks: FP6 whithin a" two speed" ERA. Int Reg Sci Rev 40(4):337–376 CrossRef
go back to reference Marrocu E, Paci R, Usai S (2013) Proximity, networking and knowledge production in Europe: what lessons for innovation policy? Technol Forecast Soc Chang 80:1484–1498 CrossRef Marrocu E, Paci R, Usai S (2013) Proximity, networking and knowledge production in Europe: what lessons for innovation policy? Technol Forecast Soc Chang 80:1484–1498 CrossRef
go back to reference Maurseth PB, Verspagen B (2002) Knowledge spillovers in Europe: a patent citation analysis. Scand J Econ 104(4):531–545 CrossRef Maurseth PB, Verspagen B (2002) Knowledge spillovers in Europe: a patent citation analysis. Scand J Econ 104(4):531–545 CrossRef
go back to reference Medda G, Piga C, Siegel DS (2006) Assessing the returns to collaborative research: firm-level evidence from Italy. Econ Innov New Technol 15(1):37–50 CrossRef Medda G, Piga C, Siegel DS (2006) Assessing the returns to collaborative research: firm-level evidence from Italy. Econ Innov New Technol 15(1):37–50 CrossRef
go back to reference Meliciani V (2016) Regional disparities in the enlarged European Union, Routledge Meliciani V (2016) Regional disparities in the enlarged European Union, Routledge
go back to reference Miguélez E, Moreno R (2013) Research networks and inventors’ mobility as drivers of innovation: evidence from Europe. Reg Stud 47(10):1668–1685 CrossRef Miguélez E, Moreno R (2013) Research networks and inventors’ mobility as drivers of innovation: evidence from Europe. Reg Stud 47(10):1668–1685 CrossRef
go back to reference Miotti L, Sachwald F (2003) Co-operative R&D: why and with whom? An integrated framework of analysis. Res Policy 32(8):1481–1499 CrossRef Miotti L, Sachwald F (2003) Co-operative R&D: why and with whom? An integrated framework of analysis. Res Policy 32(8):1481–1499 CrossRef
go back to reference Mitze T, Strotebeck F (2018) Centrality and get-richer mechanisms in interregional knowledge networks. Reg Stud 52(11):1477–1489 CrossRef Mitze T, Strotebeck F (2018) Centrality and get-richer mechanisms in interregional knowledge networks. Reg Stud 52(11):1477–1489 CrossRef
go back to reference Morone P, Taylor R (2004) Knowledge diffusion dynamics and network properties of face-to-face interactions. J Evol Econ 14(3):327–351 CrossRef Morone P, Taylor R (2004) Knowledge diffusion dynamics and network properties of face-to-face interactions. J Evol Econ 14(3):327–351 CrossRef
go back to reference Murphy KM, Topel RH (1985) Least squares with estimated regressors. J Bus Econ Stat 3(4):370–379 Murphy KM, Topel RH (1985) Least squares with estimated regressors. J Bus Econ Stat 3(4):370–379
go back to reference Nelson RR, Winter SG (1982) The Schumpeterian tradeoff revisited. Am Econ Rev 72(1):114–132 Nelson RR, Winter SG (1982) The Schumpeterian tradeoff revisited. Am Econ Rev 72(1):114–132
go back to reference Opsahl T, Panzarasa P (2009) Clustering in weighted networks. Soc Netw 31(2):155–163 CrossRef Opsahl T, Panzarasa P (2009) Clustering in weighted networks. Soc Netw 31(2):155–163 CrossRef
go back to reference Overman HG, Puga D (2002) Unemployment clusters across Europe’s regions and countries. Econ Policy 17(34):115–148 CrossRef Overman HG, Puga D (2002) Unemployment clusters across Europe’s regions and countries. Econ Policy 17(34):115–148 CrossRef
go back to reference Park HW, Leydesdorff L (2010) Longitudinal trends in networks of university–industry–government relations in South Korea: the role of programmatic incentives. Res Policy 39(5):640–649 CrossRef Park HW, Leydesdorff L (2010) Longitudinal trends in networks of university–industry–government relations in South Korea: the role of programmatic incentives. Res Policy 39(5):640–649 CrossRef
go back to reference Protogerou A, Caloghirou Y, Siokas E (2010) Policy-driven collaborative research networks in Europe. Econ Innov New Technol 19(4):349–372 CrossRef Protogerou A, Caloghirou Y, Siokas E (2010) Policy-driven collaborative research networks in Europe. Econ Innov New Technol 19(4):349–372 CrossRef
go back to reference Protogerou A, Caloghirou Y, Siokas E (2013) Twenty-five years of science-industry collaboration: the emergence and evolution of policy-driven research networks across Europe. J Technol Transf 38(6):873–895 CrossRef Protogerou A, Caloghirou Y, Siokas E (2013) Twenty-five years of science-industry collaboration: the emergence and evolution of policy-driven research networks across Europe. J Technol Transf 38(6):873–895 CrossRef
go back to reference Rodríguez-Pose A (1998) Dynamics of regional growth in Europe: social and political factors. Clarendon Press Rodríguez-Pose A (1998) Dynamics of regional growth in Europe: social and political factors. Clarendon Press
go back to reference Rodríguez-Pose A (1999) Convergence or divergence? Types of regional responses to socio-economic change in Western Europe. Tijdschr Econ Soc Geogr 90(4):365–378 CrossRef Rodríguez-Pose A (1999) Convergence or divergence? Types of regional responses to socio-economic change in Western Europe. Tijdschr Econ Soc Geogr 90(4):365–378 CrossRef
go back to reference Scherngell T, Barber MJ (2009) Spatial interaction modelling of cross-region R&D collaborations: empirical evidence from the 5th EU framework programme. Pap Reg Sci 88(3):531–546 CrossRef Scherngell T, Barber MJ (2009) Spatial interaction modelling of cross-region R&D collaborations: empirical evidence from the 5th EU framework programme. Pap Reg Sci 88(3):531–546 CrossRef
go back to reference Scherngell T, Barber MJ (2011) Distinct spatial characteristics of industrial and public research collaborations: evidence from the fifth EU Framework programme. Ann Reg Sci 46(2):247–266 CrossRef Scherngell T, Barber MJ (2011) Distinct spatial characteristics of industrial and public research collaborations: evidence from the fifth EU Framework programme. Ann Reg Sci 46(2):247–266 CrossRef
go back to reference Schoonjans B-V, Cauwenberge P-V, Bauwhede H (2013) Formal business networking and SME growth. Small Bus Econ 41(1):169–181 CrossRef Schoonjans B-V, Cauwenberge P-V, Bauwhede H (2013) Formal business networking and SME growth. Small Bus Econ 41(1):169–181 CrossRef
go back to reference Sebestyén T, Varga A (2013) Research productivity and the quality of interregional knowledge networks. Ann Reg Sci 51(1):155–189 CrossRef Sebestyén T, Varga A (2013) Research productivity and the quality of interregional knowledge networks. Ann Reg Sci 51(1):155–189 CrossRef
go back to reference Sun Y, Cao C (2015) Intra-and inter-regional research collaboration across organizational boundaries: evolving patterns in China. Technol Forecast Soc Chang 96:215–231 CrossRef Sun Y, Cao C (2015) Intra-and inter-regional research collaboration across organizational boundaries: evolving patterns in China. Technol Forecast Soc Chang 96:215–231 CrossRef
go back to reference Ter Wal A, Boschma R (2009) Applying social network analysis in economic geography: framing some key analytic issues. Ann Regi Sci 43:739–756 CrossRef Ter Wal A, Boschma R (2009) Applying social network analysis in economic geography: framing some key analytic issues. Ann Regi Sci 43:739–756 CrossRef
go back to reference Wanzenböck I (2018) A concept for measuring network proximity of regions in R&D networks. Soc Netw 54:314–325 CrossRef Wanzenböck I (2018) A concept for measuring network proximity of regions in R&D networks. Soc Netw 54:314–325 CrossRef
go back to reference Watson J (2012) Networking: Gender differences and the association with firm performance. Int Small Bus J 30(5):536–558 CrossRef Watson J (2012) Networking: Gender differences and the association with firm performance. Int Small Bus J 30(5):536–558 CrossRef
go back to reference Zaheer A, Bell GG (2005) Benefiting from network position: firm capabilities, structural holes, and performance. Strateg Manag J 26(9):809–825 CrossRef Zaheer A, Bell GG (2005) Benefiting from network position: firm capabilities, structural holes, and performance. Strateg Manag J 26(9):809–825 CrossRef
Metadata
Title
Knowledge networks in joint research projects, innovation and economic growth across European regions
Authors
Valentina Meliciani
Daniela Di Cagno
Andrea Fabrizi
Marco Marini
Publication date
02-12-2021
Publisher
Springer Berlin Heidelberg
Published in
The Annals of Regional Science / Issue 3/2022
Print ISSN: 0570-1864
Electronic ISSN: 1432-0592
DOI
https://doi.org/10.1007/s00168-021-01092-9

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