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Deja vu: A data-centric forecasting approach through time series cross-similarity

机译:Deja Vu:通过时间序列交叉相似性为数据为中心的预测方法

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摘要

Accurate forecasts are vital for supporting the decisions of modern companies. Forecasters typically select the most appropriate statistical model for each time series. However, statistical models usually presume some data generation process while making strong assumptions about the errors. In this paper, we present a novel data-centric approach - 'forecasting with cross-similarity', which tackles model uncertainty in a model-free manner. Existing similarity-based methods focus on identifying similar patterns within the series, i.e., 'self similarity'. In contrast, we propose searching for similar patterns from a reference set, i.e., 'cross-similarity'. Instead of extrapolating, the future paths of the similar series are aggregated to obtain the forecasts of the target series. Building on the cross-learning concept, our approach allows the application of similarity-based forecasting on series with limited lengths. We evaluate the approach using a rich collection of real data and show that it yields competitive accuracy in both points forecasts and prediction intervals.
机译:准确的预测对于支持现代公司的决定至关重要。预测员通常为每个时间序列选择最合适的统计模型。然而,统计模型通常会概括一些数据生成过程,同时对误差产生强烈的假设。在本文中,我们提出了一种新颖的数据以“与交叉相似性”为中心的“预测”,其以无模型方式解决模型不确定性。基于相似性的方法侧重于识别系列内的类似模式,即“自我相似性”。相比之下,我们提出从参考集的类似模式,即'交叉相似性'。而不是推断,类似系列的未来路径被聚合以获得目标系列的预测。在跨学习概念上建立,我们的方法允许在有限的长度上应用基于相似性的预测。我们使用丰富的实际数据进行评估方法,并表明它在两点预测和预测间隔中产生竞争准确性。

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