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首页> 外文期刊>International Journal of Computational Economics and Econometrics >Endogenous dynamics of innovation networks in the German automotive industry: analysing structural network evolution using a stochastic actor-oriented approach
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Endogenous dynamics of innovation networks in the German automotive industry: analysing structural network evolution using a stochastic actor-oriented approach

机译:德国汽车工业中创新网络的内在动力:使用面向随机参与者的方法分析结构网络的演变

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摘要

The generation of innovation is well known to be a social process depending on mutual interactions, aiming at accessing and exchanging knowledge in order to generate novel goods and services. Accordingly, interest in interfirm innovation networks has increased sharply over the last decade. Preceding research indicates that the structural dynamics of networks is driven both by endogenous and exogenous forces. In particular, we focus on the role of the endogenous determinants of the network evolution of interfirm networks - a category of often underestimated forces. We employ a longitudinal dataset that comprises German automotive firms' performance between 2002 and 2006 and apply a stochastic actor-oriented model (SAOM) designed to analyse both the endogenous and exogenous determinants of network change. Our results show that endogenous determinants - approximated by measures for local and global clustering - exhibit greater explanatory power than exogenous firm characteristics such as age, size, and R&D activity.
机译:众所周知,创新的产生是一个取决于相互互动的社会过程,旨在获取和交流知识以产生新颖的商品和服务。因此,在过去十年中,企业间创新网络的兴趣急剧增加。先前的研究表明,网络的结构动力学既受内力又受外力驱动。特别地,我们关注企业间网络的网络演化的内源性决定因素的作用-企业间网络经常被低估。我们采用了纵向数据集,该数据集包含2002年至2006年德国汽车公司的业绩,并应用了随机行为者导向模型(SAOM),该模型旨在分析网络变化的内在和外在决定因素。我们的结果表明,内生性决定因素(通过局部和全局聚类的度量近似)显示出比年龄,规模和研发活动等外生性企业特征更大的解释力。

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