模型不确定性下的通货膨胀分位数预测

Dimitris Korobilis
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引用次数: 3

摘要

贝叶斯模型平均(BMA)方法通常用于处理回归模型中的模型不确定性。本文展示了如何在分位数回归中引入贝叶斯模型平均方法,并允许不同的预测因子影响因变量的不同分位数。我表明,与有和没有BMA的平均回归模型相比,分位数回归BMA方法可以提供更好的预测密度,从而有助于减少未来通胀结果的不确定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantile Forecasts of Inflation Under Model Uncertainty
Bayesian model averaging (BMA) methods are regularly used to deal with model uncertainty in regression models. This paper shows how to introduce Bayesian model averaging methods in quantile regressions, and allow for different predictors to affect different quantiles of the dependent variable. I show that quantile regression BMA methods can help reduce uncertainty regarding outcomes of future inflation by providing superior predictive densities compared to mean regression models with and without BMA.
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