宏观经济时间序列预测:基于lasso的方法及其与动态因子模型的预测组合

Jiahan Li, Weiye Chen
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引用次数: 104

摘要

在数据丰富的环境中,预测经济变量相当于从大量预测者中提取和组织有用的信息。到目前为止,动态因素模型及其变体是这类练习中最成功的模型。在本文中,我们研究了一类基于lasso的方法,并评估了它们预测20个重要宏观经济变量的预测能力。这些替代模型可以同时处理数百个数据序列,并为预测提取有用的信息。分析和实证均表明,将基于lasso模型的预测与动态因子模型的预测相结合可以进一步降低均方预测误差(MSFE)。我们的三个主要发现可以总结如下。首先,对于所研究的大多数变量,所有基于lasso的模型在样本外预测评价中都优于动态因子模型。其次,通过在经济上有意义的块级别提取信息和制定预测因子,新方法大大提高了模型的可解释性。第三,通过预测组合技术将基于lasso方法的预测结果与动态因子模型的预测结果相结合,其预测结果明显优于动态因子模型预测结果或朴素随机漫步基准预测结果。
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Forecasting Macroeconomic Time Series: LASSO-Based Approaches and Their Forecast Combinations with Dynamic Factor Models
In a data-rich environment, forecasting economic variables amounts to extracting and organizing useful information from a large number of predictors. So far, the dynamic factor model and its variants have been the most successful models for such exercises. In this paper, we investigate a category of LASSO-based approaches and evaluate their predictive abilities for forecasting twenty important macroeconomic variables. These alternative models can handle hundreds of data series simultaneously, and extract useful information for forecasting. We also show, both analytically and empirically, that combing forecasts from LASSO-based models with those from dynamic factor models can reduce the mean square forecast error (MSFE) further. Our three main findings can be summarized as follows. First, for most of the variables under investigation, all of the LASSO-based models outperform dynamic factor models in the out-of-sample forecast evaluations. Second, by extracting information and formulating predictors at economically meaningful block levels, the new methods greatly enhance the interpretability of the models. Third, once forecasts from a LASSO-based approach are combined with those from a dynamic factor model by forecast combination techniques, the combined forecasts are significantly better than either dynamic factor model forecasts or the naive random walk benchmark.
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