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Spatio-temporal Outlier Detection in Precipitation Data

机译:降水数据中的时空异常检测

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The detection of outliers from spatio-temporal data is an important task due to the increasing amount of spatio-temporal data available and the need to understand and interpret it. Due to the limitations of current data mining techniques, new techniques to handle this data need to be developed. We propose a spatio-temporal outlier detection algorithm called Outstretch, which discovers the outlier movement patterns of the top-k spatial outliers over several time periods. The top-k spatial outliers are found using the Exact-Grid Top-k and Approx-Grid Top-k algorithms, which are an extension of algorithms developed by Agarwal et ah [1]. Since they use the Kulldorff spatial scan statistic, they are capable of discovering all outliers, unaffected by neighbouring regions that may contain missing values, After generating the outlier sequences, we show one way they can be interpreted, by comparing them to the phases of the El Nino Southern Oscilliation (ENSO) weather phenomenon to provide a meaningful analysis of the results.
机译:由于可用的时空数据量增加以及需要了解和解释它,从时空数据中检测来自时空数据的异常值是一个重要任务。由于当前数据挖掘技术的局限性,需要开发用于处理此数据的新技术。我们提出了一种称为ontretch的时空异常转口检测算法,它在几个时间段内发现了顶级空间异常值的异常移动模式。使用精确的网格TOP-K和大约网格TOP-K算法找到Top-K空间异常值,这是由Agarwal ET AH [1]开发的算法的扩展。由于它们使用Kulldorff空间扫描统计数据,它们能够发现所有异常值,不受相邻区域的影响,这些区域可能包含缺失值,在生成异常序列后,我们将通过将它们与阶段进行比较来解释它们可以解释一种方式。 El Nino Southern振荡(ENSO)天气现象提供了对结果的有意义分析。

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