The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences (May 2018)

MINING CO-LOCATION PATTERNS WITH CLUSTERING ITEMS FROM SPATIAL DATA SETS

  • G. Zhou,
  • Q. Li,
  • Q. Li,
  • G. Deng,
  • T. Yue,
  • X. Zhou

DOI
https://doi.org/10.5194/isprs-archives-XLII-3-2505-2018
Journal volume & issue
Vol. XLII-3
pp. 2505 – 2509

Abstract

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The explosive growth of spatial data and widespread use of spatial databases emphasize the need for the spatial data mining. Co-location patterns discovery is an important branch in spatial data mining. Spatial co-locations represent the subsets of features which are frequently located together in geographic space. However, the appearance of a spatial feature C is often not determined by a single spatial feature A or B but by the two spatial features A and B, that is to say where A and B appear together, C often appears. We note that this co-location pattern is different from the traditional co-location pattern. Thus, this paper presents a new concept called clustering terms, and this co-location pattern is called co-location patterns with clustering items. And the traditional algorithm cannot mine this co-location pattern, so we introduce the related concept in detail and propose a novel algorithm. This algorithm is extended by join-based approach proposed by Huang. Finally, we evaluate the performance of this algorithm.