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Forecasting Internal Migration in Russia Using Google Trends: Evidence from Moscow and Saint Petersburg

机译:使用Google趋势预测俄罗斯内部迁移:来自莫斯科和圣彼得堡的证据

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This paper examines the suitability of Google Trends data for the modeling and forecasting of interregional migration in Russia. Monthly migration data, search volume data, and macro variables are used with a set of univariate and multivariate models to study the migration data of the two Russian cities with the largest migration inflows: Moscow and Saint Petersburg. The empirical analysis does not provide evidence that the more people search online, the more likely they are to relocate to other regions. However, the inclusion of Google Trends data in a model improves the forecasting of the migration flows, because the forecasting errors are lower for models with internet search data than for models without them. These results also hold after a set of robustness checks that consider multivariate models able to deal with potential parameter instability and with a large number of regressors.
机译:本文介绍了谷歌趋势数据的适用性,了解俄罗斯区域间移徙的建模和预测。 每月迁移数据,搜索卷数据和宏变量都与一组单变量和多变量模型一起使用,以研究两个俄罗斯城市的迁移数据,具有最大的迁移流入:莫斯科和圣彼得堡。 实证分析并没有提供有证据表明人们在线搜索的越多,他们就越有可能搬迁到其他地区。 然而,在模型中包含Google趋势数据可以提高迁移流的预测,因为互联网搜索数据的模型的预测误差低于没有它们的模型的模型。 这些结果在一组稳健性检查后,考虑能够处理潜在参数不稳定性的多变量模型以及大量的回归量。

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