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Fast and accurate yearly time series forecasting with forecast combinations

机译:利用预测组合快速准确地进行年度时间序列预测

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It has long been known that combination forecasting strategies produce superior out-of-sample forecasting performances. In the M4 forecasting competition, a very simple forecast combination strategy achieved third place on yearly time series. An analysis of the ensemble model and its component models suggests that the competitive accuracy comes from avoiding poor forecasts, rather than from beating the best individual models. Moreover, the simple ensemble model can be fitted very quickly, can easily scale horizontally with additional CPU cores or a cluster of computers, and can be implemented by users very quickly and easily. This approach might be of particular interest to users who need accurate yearly forecasts without being able to spend significant time, resources, or expertise on tuning models. Users of the R statistical programming language can access this modeling approach using the "forecastHybrid" package. (C) 2019 Published by Elsevier B.V. on behalf of International Institute of Forecasters.
机译:众所周知,组合预测策略可产生出色的样本外预测性能。在M4预测竞赛中,一种非常简单的预测组合策略在年度时间序列上排名第三。对集成模型及其组件模型的分析表明,竞争准确性来自避免预测不佳,而不是击败最佳个人模型。而且,简单的集成模型可以非常快速地安装,可以轻松地通过额外的CPU内核或计算机集群进行水平扩展,并且可以由用户非常快速,轻松地实现。对于需要准确的年度预测但又不能花费大量时间,资源或专业知识来进行模型调整的用户,此方法可能特别有用。 R统计编程语言的用户可以使用“ forecastHybrid”包访问此建模方法。 (C)2019由Elsevier B.V.代表国际预测协会发布。

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