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Forecasting German GDP using alternative factor models based on large datasets

机译:使用基于大型数据集的替代因子模型预测德国GDP

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摘要

This paper discusses the forecasting performance of alternative factor models based on a large panel of quarterly time series for the German economy. One model extracts factors by static principal components analysis; the second model is based on dynamic principal components obtained using frequency domain methods; the third model is based on subspace algorithms for state-space models. Out-of-sample forecasts show that the forecast errors of the factor models are on average smaller than the errors of a simple autoregressive benchmark model. Among the factor models, the dynamic principal component model and the subspace factor model outperform the static factor model in most cases in terms of mean-squared forecast error. However, the forecast performance depends crucially on the choice of appropriate information criteria for the auxiliary parameters of the models. In the case of misspecification, rankings of forecast performance can change severely.  Copyright © 2007 John Wiley & Sons, Ltd.
机译:本文讨论了基于大量季度经济时间序列的德国经济的替代因子模型的预测性能。一个模型通过静态主成分分析提取因子;第二个模型基于使用频域方法获得的动态主成分。第三个模型基于状态空间模型的子空间算法。样本外预测表明,因子模型的预测误差平均小于简单自回归基准模型的误差。在因子模型中,就均方预报误差而言,动态主成分模型和子空间因子模型在大多数情况下优于静态因子模型。但是,预测性能关键取决于模型辅助参数的适当信息标准的选择。在规格不正确的情况下,预测绩效的排名可能会发生重大变化。版权所有©2007 John Wiley&Sons,Ltd.

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    Christian Schumacher;

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