蒙特卡罗方法在欧盟移民时空回归建模中的应用

M. Manuguerra, G. Sofronov, M. Tani, G. Heller
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引用次数: 2

摘要

时空回归模型在诸如气候和地质统计学等学科中得到了很好的发展,但在经济现象的建模中几乎没有应用。在这项研究中,我们模拟了1998-2010年期间欧盟技术工人和公司的迁移。该数据集提取自欧盟统计局劳动力调查(LFS),并包含按欧洲地区分层的信息。我们研究了迁移模式中的空间成分是否基于邻居或其他度量(如航班连接的存在)。在贝叶斯框架下,利用条件自回归(CAR)随机效应实现了完整的时空模型。近年来,贝叶斯方法由于能够使用马尔可夫链蒙特卡罗(MCMC)采样器来估计模型参数而被广泛应用于时空建模。本文考虑贝叶斯自适应独立采样器(BAIS)进行估计,并比较了不同的计算方案。结果表明,技术工人增长强劲的地区更有可能与其他通过航班连接的先进地区有相似之处,而不是与边境地区有相似之处。本研究的结论是图形接近性不是减少区域间技能禀赋差异的充分条件。
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Monte Carlo methods in spatio-temporal regression modeling of migration in the EU
Spatio-temporal regression models are well developed in disciplines such as, for example, climate and geostatistics, but have had little application in the modelling of economic phenomena. In this study we have modelled migrations of skilled workers and firms across the European Union during the period 1998-2010. The data set has been extracted from Eurostats Labour Force Survey (LFS) and contains information stratified by European region. We investigate whether the spatial component in the migration patterns is based either on neighbourhood or on some other metric (such as the existence of a flight connection). The complete spatio-temporal model has been implemented using conditional autoregressive (CAR) random effects in the Bayesian framework. In recent years, Bayesian methods have been widely applied to spatio-temporal modelling since they enable the use of Markov chain Monte Carlo (MCMC) samplers to estimate model parameters. In this paper, we consider the Bayesian Adaptive Independence Sampler (BAIS) for estimation, and compare different computing schemes. The results suggest that the regions with a stronger increase of skilled workers are more likely to have similarities with other advanced regions which they are connected to by flight connections, than with the regions at their border. The conclusion of this study is that graphical proximity is not a sufficient condition to reduce differences in skill endowments between regions.
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