International Journal of Digital Earth (Dec 2023)

Voxel modeling and association of ubiquitous spatiotemporal information in natural language texts

  • Dali Wang,
  • Xiaochong Tong,
  • Chenguang Dai,
  • Congzhou Guo,
  • Yi Lei,
  • Chunping Qiu,
  • He Li,
  • Yuekun Sun

DOI
https://doi.org/10.1080/17538947.2023.2185692
Journal volume & issue
Vol. 16, no. 1
pp. 868 – 890

Abstract

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The ubiquitous spatiotemporal information extracted from Internet texts limits its application in spatiotemporal association and analysis due to its unstructured nature and uncertainty. This study uses ST-Voxel modeling to solve the problem of structured modeling and the association of ubiquitous spatiotemporal information in natural language texts. It provides a new solution for associating ubiquitous spatiotemporal information on the Internet and discovering public opinion. The main contributions of this paper include: (1) It proposes a convolved method for ST-Voxel, which solves the voxel modeling problem of unstructured and uncertain spatiotemporal objects and spatiotemporal relation in natural language texts. Experiments show that this method can effectively model 5 types of spatiotemporal objects and 16 types of uncertain spatiotemporal relation founded in texts; (2) It realizes the unknown event discovery based on voxelized spatiotemporal information association. Experiments show that this method can effectively solve the aggregation of ubiquitous spatiotemporal information in multi-natural language texts, which is conducive to discovering spatiotemporal events. The selection of convolution parameters in voxel modeling is also discussed. A parameter selection method for balancing the discovery capability and discovery accuracy of spatiotemporal events is given.

Keywords