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On long memory origins and forecast horizons

机译:在长记忆起源和预测视野

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Most long memory forecasting studies assume that long memory is generated by the fractional difference operator. We argue that the most cited theoretical arguments for the presence of long memory do not imply the fractional difference operator and assess the performance of the autoregressive fractionally integrated moving average (ARFIMA) model when forecasting series with long memory generated by nonfractional models. We find that ARFIMA models dominate in forecast performance regardless of the long memory generating mechanism and forecast horizon. Nonetheless, forecasting uncertainty at the shortest forecast horizon could make short memory models provide suitable forecast performance, particularly for smaller degrees of memory. Additionally, we analyze the forecasting performance of the heterogeneous autoregressive (HAR) model, which imposes restrictions on high-order AR models. We find that the structure imposed by the HAR model produces better short and medium horizon forecasts than unconstrained AR models of the same order. Our results have implications for, among others, climate econometrics and financial econometrics models dealing with long memory series at different forecast horizons.
机译:大多数长的内存预测研究假定是由分数差分运算符生成的长存储器。我们认为长记忆的存在的最引用的理论论点并不意味着分数差分运算符,并在预测由非线电模型产生的长存储器的序列时评估自回归分馏集成的移动平均(ARFIMA)模型的性能。我们发现Arfima模型在预测性能中占主导地位,无论长记忆机制和预测地平线如何。尽管如此,预测最短预测地平线的预测不确定性可以使短暂的内存模型提供适当的预测性能,特别是对于较小的记忆程度。此外,我们分析了异构自我回归(HAR)模型的预测性能,这对高阶AR模型施加了限制。我们发现,由Har模型施加的结构比同一订单的无规定AR模型产生更好的短和中间地平线预测。我们的结果对不同预测视野的长记忆系列处理了气候计量计量和金融经济学模型的影响。

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