Structure-Based Statistical Features and Multivariate Time Series Clustering

Xiaozhe Wang, Anthony Wirth, Liang Wang
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引用次数: 76

Abstract

We propose a new method for clustering multivariate time series. A univariate time series can be represented by a fixed-length vector whose components are statistical features of the time series, capturing the global structure. These descriptive vectors, one for each component of the multivariate time series, are concatenated, before being clustered using a standard fast clustering algorithm such as k-means or hierarchical clustering. Such statistical feature extraction also serves as a dimension-reduction procedure for multivariate time series. We demonstrate the effectiveness and simplicity of our proposed method by clustering human motion sequences: dynamic and high-dimensional multivariate time series. The proposed method based on univariate time series structure and statistical metrics provides a novel, yet simple and flexible way to cluster multivariate time series data efficiently with promising accuracy. The success of our method on the case study suggests that clustering may be a valuable addition to the tools available for human motion pattern recognition research.
基于结构的统计特征与多元时间序列聚类
提出了一种新的多元时间序列聚类方法。单变量时间序列可以用固定长度的向量表示,其组成部分是时间序列的统计特征,捕获全局结构。在使用k-means或分层聚类等标准快速聚类算法进行聚类之前,将这些描述向量(一个用于多变量时间序列的每个组件)连接起来。这种统计特征提取也可以作为多变量时间序列的降维过程。我们通过对动态和高维多元时间序列的人体运动序列进行聚类,证明了我们提出的方法的有效性和简单性。基于单变量时间序列结构和统计度量的聚类方法为多变量时间序列数据的聚类提供了一种新颖、简单、灵活的聚类方法。我们的方法在案例研究中的成功表明,聚类可能是人类运动模式识别研究中可用工具的一个有价值的补充。
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