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Early Classification Approach for Multivariate Time Series using Sensors of Different Sampling Rate

机译:不同采样率传感器的多变量时间序列的早期分类方法

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Classification of Multivariate Time Series (MTS) data has been an important area of research for many years. In time-critical applications, such as health informatics, fire detection, and disaster forecasting, it is desirable to classify the MTS data as early as possible. This work proposes an early classification approach to classify an incoming MTS. The early classification approach helps to predict the class label of an incoming MTS without waiting for the full length. Different from the existing work, this work considers that sampling rate of the sensors which generated the MTS is different. The performance of the approach is evaluated on a publicly available dataset using accuracy, earliness and energy consumption.
机译:多元时间序列(MTS)数据的分类是多年来的重要研究领域。在时间关键的应用中,例如健康信息学,火灾探测和灾难预测,期望尽早对MTS数据进行分类。这项工作提出了一种提前分类方法来分类即将到期的MTS。早期分类方法有助于预测进入MT的类标签,而无需等待全长。与现有的工作不同,这项工作考虑了产生MTS的传感器的采样率是不同的。使用精度,重点和能量消耗,在公开的数据集中评估该方法的性能。

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