Symmetry (Feb 2020)

Urban Multi-Source Spatio-Temporal Data Analysis Aware Knowledge Graph Embedding

  • Ling Zhao,
  • Hanhan Deng,
  • Linyao Qiu,
  • Sumin Li,
  • Zhixiang Hou,
  • Hai Sun,
  • Yun Chen

DOI
https://doi.org/10.3390/sym12020199
Journal volume & issue
Vol. 12, no. 2
p. 199

Abstract

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Multi-source spatio-temporal data analysis is an important task in the development of smart cities. However, traditional data analysis methods cannot adapt to the growth rate of massive multi-source spatio-temporal data and explain the practical significance of results. To explore the network structure and semantic relationships, we propose a general framework for multi-source spatio-temporal data analysis via knowledge graph embedding. The framework extracts low-dimensional feature representation from multi-source spatio-temporal data in a high-dimensional space, and recognizes the network structure and semantic relationships about multi-source spatio-temporal data. Experiment results show that the framework can not only effectively utilize multi-source spatio-temporal data, but also explore the network structure and semantic relationship. Taking real Shanghai datasets as an example, we confirm the validity of the multi-source spatio-temporal data analytical framework based on knowledge graph embedding.

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