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A Multidimensional Time-Series Similarity Measure With Applications to Eldercare Monitoring

机译:多维时间序列相似性度量及其在老年人监护中的应用

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摘要

In the last decade, data mining techniques have been applied to sensor data in a wide range of application domains, such as healthcare monitoring systems, manufacturing processes, intrusion detection, database management, and others. Many data mining techniques are based on computing the similarity between two sensor data patterns. A variety of representations and similarity measures for multiattribute time series have been proposed in the literature. In this paper, we describe a novel method for computing the similarity of two multiattribute time series based on a temporal version of Smith–Waterman (SW), a well-known bioinformatics algorithm. We then apply our method to sensor data from an eldercare application for early illness detection. Our method mitigates difficulties related to data uncertainty and aggregation that often arise when processing sensor data. The experiments take place at an aging-in-place facility, TigerPlace, located in Columbia, MO, USA. To validate our method, we used data from nonwearable sensor networks placed in TigerPlace apartments, combined with information from an electronic health record. We provide a set of experiments that investigate temporal version of SW properties, together with experiments on TigerPlace datasets. On a pilot sensor dataset from nine residents, with a total of 1902 days and around 2.1 million sensor hits of collected data, we obtained an average abnormal events prediction F-measure of 0.75.
机译:在过去的十年中,数据挖掘技术已在广泛的应用领域中应用于传感器数据,例如医疗保健监控系统,制造过程,入侵检测,数据库管理等。许多数据挖掘技术都基于计算两个传感器数据模式之间的相似度。文献中已经提出了用于多属性时间序列的各种表示和相似性度量。在本文中,我们描述了一种基于时域版本的Smith-Waterman(SW)(一种著名的生物信息学算法)来计算两个多属性时间序列的相似性的新颖方法。然后,我们将我们的方法应用于来自老年人护理应用程序的传感器数据以进行早期疾病检测。我们的方法减轻了与处理传感器数据时经常出现的数据不确定性和聚合相关的困难。实验在位于美国密苏里州哥伦比亚市的就地老化设备TigerPlace上进行。为了验证我们的方法,我们使用了来自放置在TigerPlace公寓中的非穿戴式传感器网络的数据,以及来自电子健康记录的信息。我们提供了一组调查SW属性的时态版本的实验,以及有关TigerPlace数据集的实验。在来自九个居民的飞行员传感器数据集上,总共进行了1902天,收集到的数据达到了210万次传感器命中,我们获得的平均异常事件预测F值为0.75。

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