Time series classification by Euclidean distance-based visibility graph

Le Cheng, Peican Zhu, Wu Sun, Zhen Han, Keke Tang, Xiaodong Cui

Research output: Contribution to journalArticlepeer-review

10 Scopus citations

Abstract

The analysis and discrimination of time series data has important practical significance. Currently, transforming the time series data into networks through visibility graph (VG) methods is an effective approach for classifying the series data through GNNs. However, there are two main obstacles to the VG method: (1) the tension between efficiency and complexity during weighted graph construction; (2) difficulty in assigning the different importance of nodes. To tackle these difficulties, we propose an improved weighted visibility graph algorithm (WLVG) in this paper. The proposed algorithm can first intelligently assign weights to the network according to the Euclidean distance among nodes, and then resample the network by the weight coefficients resulting in the removal of the unimportant edges. Finally, in order to effectively aggregate the information among neighbors, the graph isomorphism network (GIN) is utilized for identifying the objects. Experimental results show WLVG outperforms other baseline methods on several practical datasets and demonstrate its effectiveness.

Original languageEnglish
Article number129010
JournalPhysica A: Statistical Mechanics and its Applications
Volume625
DOIs
StatePublished - 1 Sep 2023

Keywords

  • Graph classification
  • Graph isomorphic network
  • Machine learning
  • Time series data
  • Visibility graph

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