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Forecasting with nonstationary dynamic factor models

机译:非平稳动态因子模型的预测

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In this paper we analyze the structure and the forecasting performance of the dynamic factor model. It is shown that the forecasts obtained by the factor model imply shrinkage pooling terms, similar to the ones obtained from hierarchical Bayesian models that have been applied successfully in the econometric literature. Thus, the results obtained in this paper provide an additional justification for these and other types of pooling procedures. The expected decrease in MSE for using a factor model versus univariate ARIMA and shrinkage models are studied for the one factor model. Monte Carlo simulations are presented to illustrate this result. A factor model is also built to forecast GNP of European countries and it is shown that the factor model can provide a substantial improvement in forecasts with respect to both univariate and shrinkage univariatc forecasts.
机译:在本文中,我们分析了动态因素模型的结构和预测性能。结果表明,因子模型获得的预测意味着收缩汇集项,类似于从计量经济学文献中成功应用的分层贝叶斯模型获得的预测。因此,本文获得的结果为这些和其他类型的合并程序提供了另外的依据。对于一个因素模型,研究了使用因素模型与单变量ARIMA和收缩模型相比,MSE的预期下降。提出了蒙特卡洛模拟以说明该结果。还建立了一个因子模型来预测欧洲国家的国民生产总值,结果表明,该因子模型可以相对于单变量和收缩单变量预测提供实质性的改进。

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