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Space-time summarization of multisensor time series. Case of missing data

机译:多传感器时间序列的时空总结。缺少数据的情况

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A wide variety of application domains have to deal with incomplete data sets. In particular, data from sensors networks are often incomplete due to factors like partial system failures or bad conditions of measurements. With such incomplete massive spatio-temporal data sets, it becomes practically hard to manipulate data and to extract knowledge. In this paper, we use the so-called Space-Time Principal Component Analysis (STPCA) as a tool for propose a representation of the data set without missing values in a reduced dimension on which we can apply data mining and knowledge extraction algorithms. The effectiveness of the proposed method is demonstrated on real vehicle traffic data set containing about 15 million of measurements with rate of incompleteness of order 20% and more. Experiments show a really good behavior and strong robustness of the method to compute a representation of the data, summarize them and keep the inherent information.
机译:各种应用域必须处理不完整的数据集。特别地,由于部分系统故障或测量条件不良,传感器网络的数据通常是不完整的。通过这种不完整的大规模时空数据集,实际上难以操纵数据并提取知识。在本文中,我们使用所谓的时空主成分分析(STPCA)作为提出数据集的表示的工具,而无需丢失的值,我们可以应用数据挖掘和知识提取算法。所提出的方法的有效性在Real车辆交通数据集上展示了大约1500万次测量,率为20%等的不完整率。实验表明,对计算数据的表示来说,对方法进行了一个非常好的行为和强大的鲁棒性,总结了它们并保持固有的信息。

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