近期结构变化的预测

Jana Eklund, G. Kapetanios, Simon Price
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引用次数: 19

摘要

我们在最近的一次休息后研究如何预测。我们考虑监测变化,然后结合使用和不使用变化前数据的模型的预测;和稳健的方法,即滚动回归,预测平均在不同的窗口和指数加权移动平均(EWMA)预测。我们推导了相对于全样本递归基准的鲁棒方法的性能分析结果。对于受随机断裂影响的位置模型,MSFE的相对排序为EWMA <滚动回归<预测平均。在确定性中断下没有明确的排序。在蒙特卡罗实验中,预测平均在许多情况下提高了性能,并且在变化很小或不频繁的情况下几乎没有损失。当我们考察大量英国和美国的宏观经济序列时,也会出现类似的结果。
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Forecasting in the Presence of Recent Structural Change
We examine how to forecast after a recent break. We consider monitoring for change and then combining forecasts from models that do and do not use data before the change; and robust methods, namely rolling regressions, forecast averaging over different windows and exponentially weighted moving average (EWMA) forecasting. We derive analytical results for the performance of the robust methods relative to a full-sample recursive benchmark. For a location model subject to stochastic breaks the relative MSFE ranking is EWMA < rolling regression < forecast averaging. No clear ranking emerges under deterministic breaks. In Monte Carlo experiments forecast averaging improves performance in many cases with little penalty where there are small or infrequent changes. Similar results emerge when we examine a large number of UK and US macroeconomic series.
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