Encyclopedia of Big Data Technologies

Living Edition
| Editors: Sherif Sakr, Albert Zomaya

Spatial Data Mining

Living reference work entry
DOI: https://doi.org/10.1007/978-3-319-63962-8_66-1

Synonyms

Definition

The growth of spatial data which plays a part in the agricultural products, sustainable development, and human society development is accumulated continuously. Not only the size and volume are immense, the structure is also convoluted with the abundant and deep of their contents. The spatial dataset is full of the information and experience collection from geomatics that relates to Remote Sensing (RS), Global Positioning System (GPS) and Geographic Information System (GIS). A wide variety of databases consist of electronic maps and planning network from their infrastructure. With the increase in the spatial data collection, the processes of gathering, management, and transmission data require the powerful techniques. The traditional methods lag of the ability of big data query. Thus, the Spatial Data Mining (SDM) becomes the suitable technique. The Knowledge Discovery from Geographical Information System database (KDG) approach can support...

This is a preview of subscription content, log in to check access.

References

  1. Berger T (2001) Agent-based spatial models applied to agriculture: a simulation tool for technology diffusion, resource use changes and policy analysis. Agric Econ 25(2–3):245–260CrossRefGoogle Scholar
  2. Carsjens GJ, Van Der Knaap W (2002) Strategic land-use allocation: dealing with spatial relationships and fragmentation of agriculture. Landsc Urban Plan 58(2):171–179CrossRefGoogle Scholar
  3. Clark P, Niblet TT (1987) The CN2 induction algorithm. Mach Learn J 3(4):261–283Google Scholar
  4. Diwakar S (2013) Spatial vs non spatial. https://www.slideshare.net/SumantDiwakar/spatial-vs-non-spatial. Publish on: 14 Apr 2013
  5. Ester M, Frommelt A, Kriegel HP, Sander J (2000) Spatial data mining: database primitives, algorithms and efficient DBMS support. Int J Data Min Knowl Discov 4(2):193–216CrossRefGoogle Scholar
  6. Goebel M and Gruenwald L (1999) A survey of data mining and knowledge discovery software tools. ACM SIGKDD explorations newsletter 1(1):20–33Google Scholar
  7. Goodchild MF (2007) Citizens as voluntary sensors: spatial data infrastructure in the world of web 2.0. IJSDIR 2:24–32Google Scholar
  8. Han JW, Kamber M, Pei J (2012) Data mining: concepts and techniques, 3rd edn. Morgan Kaufmann Publishers Inc., BurlingtonMATHGoogle Scholar
  9. Koperski K (1999) A progressive refinement approach to spatial data mining. PhD thesis, Simon Fraser University, British ColumbiaGoogle Scholar
  10. Li DR, Cheng T (1994) KDG-knowledge discovery from GIS. In: Proceeding of the Canadian conference on GIS, Ottawa, pp 1001–1012Google Scholar
  11. Li DY, Du Y (2007) Artificial intelligence with uncertainty. Chapman and Hall/CRC, LondonCrossRefMATHGoogle Scholar
  12. Li D, Wang S, Li D (2015) Spatial data mining: theory and application. Springer, Berlin/HeidelbergCrossRefGoogle Scholar
  13. Li D, Wang S, Yuan H, Li D (2016) Software and applications of spatial data mining. Wiley Interdiscip Rev Data Min Knowl Disc 6(3):84–114CrossRefGoogle Scholar
  14. Mannion AM (1995) Agriculture and environmental change: temporal and spatial dimensions. Wiley, ChichesterGoogle Scholar
  15. Marsala C, Bigolin NM (1998) Spatial data mining with fuzzy decision trees. In: Ebecken NFF (ed) Data mining. WIT Press, Boston, pp 235–248Google Scholar
  16. Piatetsky-shapiro G (1994) An overview of knowledge discovery in databases: recent progress and challenges. In: Ziarko Wojciech P (ed) Rough sets, fuzzy sets and knowledge discovery. Springer, London, pp 1–10Google Scholar

Copyright information

© Springer International Publishing AG 2018

Authors and Affiliations

  1. 1.Beijing Institute of TechnologyBeijingChina

Section editors and affiliations

  • Timos Sellis
    • 1
  • Aamir Cheema
  1. 1.Data Science Research InstituteSwinburne University of TechnologyMelbourneAustralia