文章詳目資料

Journal of Computers EIMEDLINEScopus

  • 加入收藏
  • 下載文章
篇名 An Approach to Extract State Information from Multivariate Time Series
卷期 31:6
作者 Jun GuiZeyu ZhengZhaobo QinDanping JiaYuan GaoZhi LiuQingfeng Yao
頁次 001-011
關鍵字 DBSEmultivariate time seriesstate extractionsystem behaviorEIMEDLINEScopus
出刊日期 202012
DOI 10.3966/199115992020123106001

中文摘要

英文摘要

System behaviors could be recorded as multivariate time series by smart sensors. It is challenging to interpret such high-dimensional dataset with a one-dimensional temporal state sequence. In this paper, we propose a new approach DBSE (Distribution-based States Extraction) which is based on statistical and clustering analysis. State extraction problem could be resolved through using distribution parameters to describe each subsequence in multivariate time series and applying clustering method to extract states based on distribution similarity in order to obtain a temporal state sequence and information of each state. We validate DBSE and demonstrate how to use DBSE in real-world by extracting state information from a wearable sensor dataset (PAMAP2_Dataset). By comparing DBSE with TICC (Toeplitz Inverse Covariance-based Clustering) and FCM (Fuzzy C-means Clustering), the new approach is more accurate and effective. Moreover, DBSE is also expected to facilitate future behavior analysis.

本卷期文章目次

相關文獻