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Forecasting financial and macroeconomic variables using data reduction methods: New empirical evidence

机译:使用数据减少方法预测财务和宏观经济变量:新的经验证据

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摘要

In this paper, we empirically assess the predictive accuracy of a large group of models based on the use of principle components and other shrinkage methods, including Bayesian model averaging and various bagging, boosting, LASSO and related methods Our results suggest that model averaging does not dominate other well designed prediction model specification methods, and that using a combination of factor and other shrinkage methods often yields superior predictions. For example, when using recursive estimation windows, which dominate other windowing approaches in our experiments, prediction models constructed using pure principal component type models combined with shrinkage methods yield mean square forecast error best models around 70% of the time, when used to predict 11 key macroeconomic indicators at various forecast horizons. Baseline linear models (which win around 5% of the time) and model averaging methods (which win around 25% of the time) fare substantially worse than our sophisticated nonlinear models. Ancillary findings based on our forecasting experiments underscore the advantages of using recursive estimation strategies, and provide new evidence of the usefulness of yield and yield-spread variables in nonlinear prediction specification.
机译:在本文中,我们基于主成分和其他收缩方法(包括贝叶斯模型平均以及各种装袋,增强,LASSO和相关方法)的使用,经验评估了一组大型模型的预测准确性。我们的结果表明,模型平均不会在设计精良的其他预测模型规范方法中占据主导地位,并且结合使用因子和其他收缩方法通常可以产生更好的预测。例如,当使用在我们的实验中其他窗口方法占主导的递归估计窗口时,使用纯主成分类型模型与收缩方法相结合构建的预测模型在预测11时有70%的时间会产生均方最佳预测误差模型。不同预测范围的关键宏观经济指标。基线线性模型(赢得约5%的时间)和模型平均方法(赢得约25%的时间)比我们复杂的非线性模型差得多。根据我们的预测实验得出的辅助结果突显了使用递归估计策略的优势,并为非线性预测规范中收益率和收益率分布变量的有用性提供了新的证据。

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