首页> 外文OA文献 >What determines the embeddedness of European regions in EU funded RD networks? Evidence using graph theoretic approaches and spatial panel modeling techniques
【2h】

What determines the embeddedness of European regions in EU funded RD networks? Evidence using graph theoretic approaches and spatial panel modeling techniques

机译:是什么决定了欧盟地区在欧盟资助的研发网络中的嵌入性?使用图论方法和空间面板建模技术的证据

摘要

In the recent past, regional, national and supranational Science, Innovation and Technology (STI) policies have emphasized supporting interactions and networks between organisations of the innovation system. The policy instrument of the EU in this context are the European Framework Programmes (FPs) that support pre-competitive R&D projects, creating a pan-European network of actors performing joint R&D. In this study, we focus on the embeddedness of European regions in this network. By embeddedness we refer to the notion of centrality in the sense of the Social Network Analysis (SNA) literature. In network theory, vertices that have a more prominent and central network position will more likely benefit from network advantages than actors that have a more distant, peripheral position in the network. A higher network embeddedness of a region, i.e. of organisations located in that region, may increase information and knowledge access in the network, and, thus, create a competitive advantage when it comes to the formation of new collaborations and alliances. The objective of the study is to explain why some regions are able to obtain a better network embeddedness in the European network of R&D cooperation than other regions. For this reason we aim to identify determinants that influence a region's embededdness, involving region-internal factors, such as regional characteristics on their innovation capability, their economic structure and technological specialisation, as well as region-external factors considering the influence of these variables in the neighbourhood of a specific region, referred to as spatial spillovers. To address this question we employ spatial panel modelling techniques, explicitly taking into account the time dimension in our data and the influence of spillovers by specifying a panel spatial durbin error model (SDEM). The dependent variable is the regions' centrality in the FP network for the years 1998-2006, using a sample of 241 NUTS-regions of the EU-25 member states. We aggregate individual FP cooperations to the regional level leading to a network where the nodes are represented by regions and the edges by cross-region collaboration intensities. Using these matrices we calculate a region's centrality relying on two different centrality concepts, namely betweeness- and eigenvector centrality. The independent variables involve regional characteristics related to a region's knowledge production capacity and a region's general economic structure. The results will significantly enrich our understanding of the relationship between a regions network embededdness and its internal and external characteristics.
机译:最近,区域,国家和超国家的科学,创新和技术(STI)政策都强调了支持创新系统组织之间的互动和网络。在此背景下,欧盟的政策工具是支持竞争前研发项目的欧洲框架计划(FP),从而建立了进行联合研发的泛欧洲参与者网络。在这项研究中,我们重点研究了欧洲区域在该网络中的嵌入性。通过嵌入,我们指的是社交网络分析(SNA)文献中的中心性概念。在网络理论中,与网络中具有更远的外围位置的角色相比,具有更突出的中心网络位置的顶点更有可能从网络优势中受益。一个地区(即位于该地区的组织)的较高的网络嵌入度可能会增加网络中的信息和知识访问,从而在形成新的合作和联盟时创造竞争优势。该研究的目的是解释为什么某些地区能够在欧洲的研发合作网络中获得比其他地区更好的网络嵌入度。因此,我们旨在确定影响区域嵌入度的决定因素,其中涉及区域内部因素,例如区域特征对其创新能力,经济结构和技术专业化的影响,以及区域外部因素,其中考虑了这些变量的影响。特定区域的邻域,称为空间溢出。为了解决这个问题,我们采用了空间面板建模技术,通过指定面板空间杜宾误差模型(SDEM),明确考虑了数据中的时间维度和溢出的影响。因变量是1998-2006年间区域网络在FP网络中的中心地位,使用了EU-25成员国的241个NUTS区域的样本。我们将各个FP合作汇总到区域级别,从而形成一个网络,其中节点由区域表示,边缘由跨区域协作强度表示。使用这些矩阵,我们根据两个不同的中心性概念,即essess和本征向量中心性,来计算区域的中心性。自变量涉及与区域知识生产能力和区域总体经济结构有关的区域特征。结果将大大丰富我们对区域网络嵌入度与其内部和外部特征之间关系的理解。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号