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Efficient Kernel-Based Subsequence Search for Enabling Health Monitoring Services in IoT-Based Home Setting

机译:基于内核的高效子序列搜索可在基于物联网的家庭环境中启用健康监控服务

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摘要

This paper presents an efficient approach for subsequence search in data streams. The problem consists of identifying coherent repetitions of a given reference time-series, also in the multivariate case, within a longer data stream. The most widely adopted metric to address this problem is Dynamic Time Warping (DTW), but its computational complexity is a well-known issue. In this paper, we present an approach aimed at learning a kernel approximating DTW for efficiently analyzing streaming data collected from wearable sensors, while reducing the burden of DTW computation. Contrary to kernel, DTW allows for comparing two time-series with different length. To enable the use of kernel for comparing two time-series with different length, a feature embedding is required in order to obtain a fixed length vector representation. Each vector component is the DTW between the given time-series and a set of “basis” series, randomly chosen. The approach has been validated on two benchmark datasets and on a real-life application for supporting self-rehabilitation in elderly subjects has been addressed. A comparison with traditional DTW implementations and other state-of-the-art algorithms is provided: results show a slight decrease in accuracy, which is counterbalanced by a significant reduction in computational costs.
机译:本文提出了一种在数据流中进行子序列搜索的有效方法。问题包括在较长的数据流中识别给定参考时间序列的连贯重复(在多变量情况下)。解决此问题最广泛采用的度量标准是动态时间规整(DTW),但是其计算复杂性是众所周知的问题。在本文中,我们提出了一种旨在学习近似DTW的内核的方法,以有效分析从可穿戴式传感器收集的流数据,同时减少DTW计算的负担。与内核相反,DTW允许比较两个具有不同长度的时间序列。为了能够使用内核来比较两个具有不同长度的时间序列,需要进行特征嵌入以获得固定长度的向量表示。每个向量分量都是给定时间序列和一组随机选择的“基础”序列之间的DTW。该方法已经在两个基准数据集上得到了验证,并且已经在支持老年人自我康复的现实生活中得到了解决。提供了与传统DTW实现和其他最新算法的比较:结果显示精度略有下降,而计算成本的显着降低则抵消了这种情况。

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