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Data visualization and forecast combination for probabilistic load forecasting in GEFCom2017 final match

机译:数据可视化和预测组合,用于GEFCom2017决赛中的概率负荷预测

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This paper describes the methods used by Team Cassandra, a joint effort between IBM Research Australia and the University of Melbourne, in the GEFCom2017 load forecasting competition. An important first phase in the forecasting effort involved a deep exploration of the underlying dataset. Several data visualisation techniques were applied to help us better understand the nature and size of gaps, outliers, the relationships between different entities in the dataset, and the relevance of custom date ranges. Improved, cleaned data were then used to train multiple probabilistic forecasting models. These included a number of standard and well-known approaches, as well as a neural-network based quantile forecast model that was developed specifically for this dataset. Finally, model selection and forecast combination were used to choose a custom forecasting model for every entity in the dataset. (C) 2019 International Institute of Forecasters. Published by Elsevier B.V. All rights reserved.
机译:本文描述了由Cassandra团队使用的方法,该团队是IBM Research Australia和墨尔本大学之间在GEFCom2017负荷预测竞赛中的共同努力。预测工作的重要的第一阶段涉及对基础数据集的深入探索。应用了多种数据可视化技术,以帮助我们更好地理解间隙的性质和大小,异常值,数据集中不同实体之间的关系以及自定义日期范围的相关性。然后,使用经过改进和清理的数据来训练多个概率预测模型。其中包括许多标准和众所周知的方法,以及专门为此数据集开发的基于神经网络的分位数预测模型。最后,使用模型选择和预测组合为数据集中的每个实体选择自定义预测模型。 (C)2019国际预报员学会。由Elsevier B.V.发布。保留所有权利。

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