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Forecasting with dimension switching VARs

机译:使用维度切换VAR进行预测

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This paper develops methods for VAR forecasting when the researcher is uncertain about which variables enter the VAR, and the dimension of the VAR may be changing over time. It considers the case where there are N variables which might potentially enter a VAR and the researcher is interested in forecasting N~* of them. Thus, the researcher is faced with 2~(N-N~*) potential VARs. If N is large, conventional Bayesian methods can be infeasible due to the computational burden of dealing with a huge model space. Allowing for the dimension of the VAR to change over time only increases this burden. In light of these considerations, this paper uses computationally practical approximations adapted from the dynamic model averaging literature in order to develop methods for dynamic dimension selection (DDS) in VARs. We then show the benefits of DDS in a macroeconomic forecasting application. In particular, DDS switches between different parsimonious VARs and forecasts appreciably better than various small and large dimensional VARs.
机译:当研究人员不确定哪些变量输入VAR且VAR的大小可能随时间变化时,本文开发了VAR预测方法。它考虑了存在N个变量可能会输入VAR的情况,并且研究人员有兴趣预测其中的N〜*个变量。因此,研究人员面临着2〜(N-N〜*)个潜在的VAR。如果N大,由于处理巨大模型空间的计算负担,常规的贝叶斯方法可能不可行。允许VAR的大小随时间变化只会增加此负担。考虑到这些考虑因素,本文使用从动态模型平均文献改编的实用计算近似值,以开发VAR中动态尺寸选择(DDS)的方法。然后,我们将在宏观经济预测应用中展示DDS的优势。尤其是,DDS在不同的简约VAR之间进行切换,并且预测效果明显优于各种大小尺寸的VAR。

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