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Size Matters: Estimation Sample Length and Electricity Price Forecasting Accuracy

机译:尺寸事项:估算样品长度和电价预测准确性

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摘要

Short-tern electricity price forecasting models are typically estimated via rolling windows, i.e. by using only the most recent observations. Nonetheless, the literature does not provide guidelines on how to select the optimal size of such windows. This paper shows that determining the appropriate window prior to estimation dramatically improves forecasting performances. In addition. it proposes a simple two-step approach to choose the best performing models and window sizes. The value of this methodology is illustrated by analyzing hourly datasets from two large power markets (Nord Pool and IPEX) with a selection of eleven different forecasting models. Incidentally, our empirical application reveals that simple models, such as a simple linear regression (SLR) with only two parameters, can perform unexpectedly well if estimated on extremely short samples. Surprisingly, in the Nord Pool, such SLR is the best performing model in 13 out 24 trading periods.
机译:短期电费预测模型通常通过滚动窗口估计,即仅使用最近的观察结果。尽管如此,文献不提供关于如何选择此类窗口的最佳大小的指导。本文表明,在估计之前确定适当的窗口显着提高了预测性能。此外。它提出了一种简单的两步方法,可以选择最佳的执行模型和窗口尺寸。通过分析来自两个大型电力市场(NORD POOL和IPEX)的每小时数据集,通过选择11个不同的预测模型来说明该方法的值。顺便提及,我们的实证应用程序揭示了简单的模型,例如具有两个参数的简单线性回归(SLR),如果估计在极短的样本上,则可以出乎意料地执行。令人惊讶的是,在北欧池中,这样的单反是24个交易期间最好的表演模型。

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