Forecasting in the Presence of Instabilities: How Do We Know Whether Models Predict Well and How to Improve Them

B. Rossi
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引用次数: 27

Abstract

This article provides guidance on how to evaluate and improve the forecasting ability of models in the presence of instabilities, which are widespread in economic time series. Empirically relevant examples include predicting the financial crisis of 2007–08, as well as, more broadly, fluctuations in asset prices, exchange rates, output growth, and inflation. In the context of unstable environments, I discuss how to assess models’ forecasting ability; how to robustify models’ estimation; and how to correctly report measures of forecast uncertainty. Importantly, and perhaps surprisingly, breaks in models’ parameters are neither necessary nor sufficient to generate time variation in models’ forecasting performance: thus, one should not test for breaks in models’ parameters, but rather evaluate their forecasting ability in a robust way. In addition, local measures of models’ forecasting performance are more appropriate than traditional, average measures. (JEL C51, C53, E31, E32, E37, F37)
存在不稳定性的预测:我们如何知道模型是否预测良好以及如何改进它们
本文对经济时间序列中普遍存在的不稳定性如何评价和提高模型的预测能力提供了指导。与经验相关的例子包括预测2007-08年的金融危机,以及更广泛地预测资产价格、汇率、产出增长和通胀的波动。在不稳定的环境下,我讨论了如何评估模型的预测能力;如何对模型估计进行鲁棒化;以及如何正确报告预测不确定性的度量。重要的是,也许令人惊讶的是,模型参数的中断既不是必要的也不是充分的,以产生模型预测性能的时间变化:因此,人们不应该测试模型参数的中断,而是以稳健的方式评估它们的预测能力。此外,模型预测性能的局部度量比传统的平均度量更合适。(凝胶c51, c53, e31, e32, e37, f37)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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