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Day-ahead electricity price forecasting with high-dimensional structures: Univariate vs. multivariate modeling frameworks

机译:具有高维结构的日前电价预测:单变量与多变量建模框架

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摘要

We conduct an extensive empirical study on short-term electricity price forecasting (EPF) to address the long-standing question if the optimal model structure for EPF is univariate or multivariate. We provide evidence that despite a minor edge in predictive performance overall, the multivariate modeling framework does not uniformly outperform the univariate one across all 12 considered datasets, seasons of the year or hours of the day, and at times is outperformed by the latter. This is an indication that combining advanced structures or the corresponding forecasts from both modeling approaches can bring a further improvement in forecasting accuracy. We show that this indeed can be the case, even for a simple averaging scheme involving only two models. Finally, we also analyze variable selection for the best performing high dimensional lasso-type models, thus provide guidelines to structuring better performing forecasting model designs. (C) 2018 Elsevier B.V. All rights reserved.
机译:我们针对短期电价预测(EPF)进行了广泛的经验研究,以解决长期存在的问题,即EPF的最佳模型结构是单变量还是多变量。我们提供的证据表明,尽管总体上预测性能方面的优势不大,但多元建模框架在所有12个被考虑的数据集(一年中的季节或一天中的小时数)上并不能始终胜过单变量,有时甚至不如后者。这表明结合两种建模方法的高级结构或相应的预测可以进一步提高预测准确性。我们证明,即使对于仅涉及两个模型的简单平均方案,情况也确实如此。最后,我们还分析了性能最佳的高维套索类型模型的变量选择,从而为构造性能更好的预测模型设计提供了指导。 (C)2018 Elsevier B.V.保留所有权利。

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