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An Online Method to Detect Urban Computing Outliers via Higher-Order Singular Value Decomposition

机译:通过高阶奇异值分解检测城市计算异常值的在线方法

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摘要

Here we propose an online method to explore the multiway nature of urban spaces data for outlier detection based on higher-order singular value tensor decomposition. Our proposal has two sequential steps: (i) the offline modeling step, where we model the outliers detection problem as a system; and (ii) the online modeling step, where the projection distance of each data vector is decomposed by a multidimensional method as new data arrives and an outlier statistical index is calculated. We used real data gathered and streamed by urban sensors from three cities in Finland, chosen during a continuous time interval: Helsinki, Tuusula, and Lohja. The results showed greater efficiency for the online method of detection of outliers when compared to the offline approach, in terms of accuracy between a range of 8.5% to 10% gain. We observed that online detection of outliers from real-time monitoring through the sliding window becomes a more adequate approach once it achieves better accuracy.
机译:在这里,我们提出了一种在线方法,用于探索基于高阶奇异值张量分解的城市空间数据的多路性质以进行离群值检测。我们的建议包括两个连续步骤:(i)离线建模步骤,其中将离群值检测问题建模为一个系统; (ii)在线建模步骤,其中当新数据到达时,通过多维方法分解每个数据向量的投影距离,并计算离群值统计指标。我们使用了来自芬兰三个城市的城市传感器收集和传输的真实数据,这些数据是在连续的时间间隔内选择的:赫尔辛基,图苏拉和洛贾。结果显示,与离线方法相比,在线方法检测离群值的效率更高,准确度在8.5%到10%之间。我们观察到,一旦达到更好的准确性,就可以通过滑动窗口通过实时监视在线检测离群值。

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