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The Wisdom of the Data: Getting the Most Out of Univariate Time Series Forecasting

机译:数据的智慧:充分利用单变量时间序列预测

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Forecasting is a challenging task that typically requires making assumptions about the observed data but also the future conditions. Inevitably, any forecasting process will result in some degree of inaccuracy. The forecasting performance will further deteriorate as the uncertainty increases. In this article, we focus on univariate time series forecasting and we review five approaches that one can use to enhance the performance of standard extrapolation methods. Much has been written about the “wisdom of the crowds” and how collective opinions will outperform individual ones. We present the concept of the “wisdom of the data” and how data manipulation can result in information extraction which, in turn, translates to improved forecast accuracy by aggregating (combining) forecasts computed on different perspectives of the same data. We describe and discuss approaches that are based on the manipulation of local curvatures (theta method), temporal aggregation, bootstrapping, sub-seasonal and incomplete time series. We compare these approaches with regards to how they extract information from the data, their computational cost, and their performance.
机译:预测是一个具有挑战性的任务,通常需要对观察到的数据做出假设,而且需要对未来的条件进行假设。不可避免地,任何预测过程都会导致某种程度的不准确性。随着不确定性的增加,预测性能将进一步恶化。在本文中,我们专注于单变量时间序列预测,我们审查了五种方法可以用于增强标准推断方法的性能。很多关于“人群智慧”以及集体意见如何优于个别的意见。我们介绍了“数据智慧”的概念以及数据操作如何导致信息提取,这反过来又转化为通过在相同数据的不同视角上计算的聚合(组合)预测改善预测精度。我们描述并讨论了基于局部曲率(THETA方法),时间聚合,自动启动,子季节和不完整时间序列的方法。我们将这些方法与他们如何从数据,计算成本及其性能中提取信息。

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