Forecasting Levels in Loglinear Unit Root Models

IF 0.8 4区 经济学 Q3 ECONOMICS Econometric Reviews Pub Date : 2023-07-12 DOI:10.1080/07474938.2023.2224175
Kees Jan van Garderen
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Abstract

Abstract This article considers unbiased prediction of levels when data series are modeled as a random walk with drift and other exogenous factors after taking natural logs. We derive the unique unbiased predictors for growth and its variance. Derivation of level forecasts is more involved because the last observation enters the conditional expectation and is highly correlated with the parameter estimates, even asymptotically. This leads to conceptual questions regarding conditioning on endogenous variables. We prove that no conditionally unbiased forecast exists. We derive forecasts that are unconditionally unbiased and take into account estimation uncertainty, non linearity of the transformations, and the correlation between the last observation and estimate, which is quantitatively more important than estimation uncertainty and future disturbances together. The exact unbiased forecasts are shown to have lower Mean Squared Forecast Error (MSFE) than usual forecasts. The results are applied to Bitcoin price levels and a disaggregated eight sector model of UK industrial production.
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对数线性单位根模型的预测水平
摘要本文考虑了在取自然对数后,将数据序列建模为具有漂移和其他外部因素的随机游动时对水平的无偏预测。我们导出了增长及其方差的唯一无偏预测因子。水平预测的推导更为复杂,因为最后一次观测进入条件期望,并且与参数估计高度相关,甚至是渐近的。这导致了关于内生变量条件作用的概念问题。我们证明了不存在条件无偏的预测。我们得出的预测是无条件无偏的,并考虑了估计的不确定性、变换的非线性以及上次观测和估计之间的相关性,这在数量上比估计的不确定度和未来扰动加在一起更重要。精确无偏预测的均方预测误差(MSFE)低于通常的预测。研究结果应用于比特币价格水平和英国工业生产的八部门分类模型。
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来源期刊
Econometric Reviews
Econometric Reviews 管理科学-数学跨学科应用
CiteScore
1.70
自引率
0.00%
发文量
27
审稿时长
>12 weeks
期刊介绍: Econometric Reviews is widely regarded as one of the top 5 core journals in econometrics. It probes the limits of econometric knowledge, featuring regular, state-of-the-art single blind refereed articles and book reviews. ER has been consistently the leader and innovator in its acclaimed retrospective and critical surveys and interchanges on current or developing topics. Special issues of the journal are developed by a world-renowned editorial board. These bring together leading experts from econometrics and beyond. Reviews of books and software are also within the scope of the journal. Its content is expressly intended to reach beyond econometrics and advanced empirical economics, to statistics and other social sciences.
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