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Land grading and evaluating using spatial data mining(PDF)

《地球科学与环境学报》[ISSN:1672-6561/CN:61-1423/P]

Issue:
2005年第03期
Page:
72-77
Research Field:
Publishing date:

Info

Title:
Land grading and evaluating using spatial data mining
Author(s):
JIA Ze-lu12LIU Yao-lin2ZHANG Tong3
1.School of Geology and Environment Engineering, Central South University, Changsha 410083, China; 2. School of Resource and Environment Science,Wuhan University,Wuhan 430079,China; 3. Department o f Geography San Diego State University, 5500 Campanile Drive San Diego, CA 92182-4493, USA
Keywords:
spatial data mining decision tree land grading and evaluating view classifying data
PACS:
P208
DOI:
-
Abstract:
A brief introduction to spatial data mining and decision tree is proposed. Thereupon, by researching on the arith- metic of decision tree, this paper applies the visual spatial data mining technique into the field of land grading and evaluating. And then based on visual C+ + 6.0 and MapObject 2.0, a spatial data mining prototype system for land grading and evalua- ting is designed and developed, in which the decision tree is used as the basic arithmetic of the spatial data mining of the sys- tem. For land grading and evaluating, training and learning method is adopted and the integration of them implemented. Furthermore, a model of land grading and evaluating based on decision tree is addressed, especially the system framework, the main modules, the interface and the rough workflow of the system. The approach used in the paper is a new exploration for the methodology of land grading and evaluating, a new attempt for implementation of land information system(LIS),a developing direction for the intellectualized LIS as well.

References:

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