将大量密度预测与贝叶斯预测合成相结合

Tony Chernis
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引用次数: 0

摘要

贝叶斯预测合成法是一种灵活的密度预测组合方法。这种灵活性来自于选择任意合成函数来组合预测结果的能力。我研究的是在组合大量预测时如何选择合成函数--这在宏观经济学中很常见。估算大量预测的组合权重非常困难,因此我考虑用收缩先验和因子建模技术来解决这个问题。这些技术在收缩先验的稀疏权重和因子建模技术的密集权重之间形成了有趣的对比。我发现,收缩先验的稀疏权重在各种练习中表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining Large Numbers of Density Predictions with Bayesian Predictive Synthesis
Bayesian Predictive Synthesis is a flexible method of combining density predictions. The flexibility comes from the ability to choose an arbitrary synthesis function to combine predictions. I study choice of synthesis function when combining large numbers of predictions – a common occurrence in macroeconomics. Estimating combination weights with many predictions is difficult, so I consider shrinkage priors and factor modelling techniques to address this problem. These techniques provide an interesting contrast between the sparse weights implied by shrinkage priors and dense weights of factor modelling techniques. I find that the sparse weights of shrinkage priors perform well across exercises.
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