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首页> 外文期刊>Journal of Econometrics >Forecasting financial and macroeconomic variables using data reduction methods: New empirical evidence
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Forecasting financial and macroeconomic variables using data reduction methods: New empirical evidence

机译:使用数据约简方法预测金融和宏观经济变量:新的经验证据

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In this paper, we empirically assess the predictive accuracy of a large group of models that are specified using principle components and other shrinkage techniques, including Bayesian model averaging and various bagging, boosting, least angle regression and related methods. Our results suggest that model averaging does not dominate other well designed prediction model specification methods, and that using "hybrid" combination factor/shrinkage methods often yields superior predictions. More specifically, when using recursive estimation windows, which dominate other "windowing" approaches, "hybrid" models are mean square forecast error "best" around 1/3 of the time, when used to predict 11 key macroeconomic indicators at various forecast horizons. Baseline linear (factor) models also "win" around 1/3 of the time, as do model averaging methods. Interestingly, these broad findings change noticeably when considering different sub-samples. For example, when used to predict only recessionary periods, "hybrid" models "win" in 7 of 11 cases, when condensing findings across all "windowing" approaches, estimation methods, and models, while model averaging does not "win" in a single case. However, in expansions, and during the 1990s, model averaging wins almost 1/2 of the time. Overall, combination factor/shrinkage methods "win" approximately 1/2 of the time in 4 of 6 different sample periods. 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 model specification
机译:在本文中,我们根据经验评估使用主成分和其他收缩技术(包括贝叶斯模型平均和各种装袋,增强,最小角度回归及相关方法)指定的一大组模型的预测准确性。我们的结果表明,模型平均并不能支配其他设计良好的预测模型规范方法,并且使用“混合”组合因子/收缩方法通常可以产生更好的预测。更具体地说,当使用在其他“窗口式”方法中占主导地位的递归估计窗口时,“混合”模型是均方预测误差的“最佳”值,大约三分之一的时间用于预测各种预测范围内的11个关键宏观经济指标。基线线性(因子)模型也大约有1/3的时间“获胜”,模型平均方法也是如此。有趣的是,当考虑不同的子样本时,这些广泛的发现会发生明显的变化。例如,当仅用于预测衰退期时,“混合”模型会在11个案例中的7个案例中“获胜”,而在所有“窗口式”方法,估计方法和模型中汇总结果时,而模型平均不会在一个“获胜”过程中“获胜”。单例。但是,在扩展中以及1990年代,模型平均赢得了将近1/2的时间。总体而言,组合因子/收缩率方法在6个不同采样周期中的4个采样周期中大约有1/2倍“获胜”。根据我们的预测实验得出的辅助结果强调了使用递归估计策略的优势,并为非线性预测模型规范中收益率和收益率分布变量的有用性提供了新证据。

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