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Forecasting Histogram Time Series With K-nearest Neighbours Methods

机译:K近邻法预测直方图时间序列

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摘要

Histogram time series (HTS) describe situations where a distribution of values is available for each instant of time. These situations usually arise when contemporaneous or temporal aggregation is required. In these cases, histograms provide a summary of the data that is more informative than those provided by other aggregates such as the mean. Some fields where HTS are useful include economy, official statistics and enviroumental science.rnThis article adapts the k-Nearest Neighbours (k-NN) algorithm to forecast HTS and, more generally, to deal with histogram data. The proposed k-NN relies on the choice of a distance that is used to measure dissimilarities between sequences of histograms and to compute the forecasts. The Mallows distance and the Wasserstein distance are considered. The forecasting ability of the k-NN adaptation is illustrated with meteorological and financial data, and promising results are obtained. Finally, further research issues are discussed.
机译:直方图时间序列(HTS)描述了每个时间点都有值分布的情况。这些情况通常在需要同时或临时聚合时出现。在这些情况下,直方图提供的数据摘要比其他汇总(例如均值)提供的信息更丰富。 HTS有用的一些领域包括经济,官方统计和环境科学。rn本文采用k最近邻算法(k-NN)来预测HTS,更广泛地讲,是用于处理直方图数据。提出的k-NN依赖于距离的选择,该距离用于测量直方图序列之间的差异并计算预测。考虑到Mallows距离和Wasserstein距离。利用气象和金融数据说明了k-NN适应的预测能力,并获得了可喜的结果。最后,讨论了进一步的研究问题。

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