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Knowledge spillovers across Europe: Evidence from a Poisson spatial interaction model with spatial effects

机译:欧洲知识溢出:来自具有空间效应的泊松空间相互作用模型的证据

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We apply a Bayesian hierarchical Poisson spatial interaction model to the paper trail left by patent citations between high-technology patents in Europe to identify and measure spatial separation effects of interregional knowledge flows. The model introduced here is novel in that it allows for spatially structured origin and destination effects for the regions. Estimation of the model is carried out within a Bayesian framework using data augmentation and Markov Chain Monte Carlo (MCMC) methods, related to recent work in Fruehwirth-Schnatter and Wagner (2004). This allows MCMC sampling from well-known distribution families, and thus provides a substantial improvement over MCMC estimation based on Metropolis-Hastings sampling from non-standard conditional distributions.
机译:我们将贝叶斯分层Poisson空间相互作用模型应用于欧洲高科技专利之间的专利引用所留下的论文线索,以识别和衡量区域间知识流的空间分离效应。这里介绍的模型是新颖的,因为它允许在空间上构造区域的起点和终点效果。该模型的估计是在贝叶斯框架内使用数据增强和马尔可夫链蒙特卡洛(MCMC)方法进行的,该方法与Fruehwirth-Schnatter和Wagner(2004)的最新工作有关。这允许从著名的分布族中进行MCMC采样,从而大大改善了基于基于非标准条件分布的Metropolis-Hastings采样的MCMC估计。

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