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A variable precision rough set approach to knowledge discovery in land cover classification

  • Cleveland State University

Research output: Contribution to journalArticlepeer-review

5 Scopus citations

Abstract

This paper presents a granular computing approach to spatial classification and prediction of land cover classes using rough set variable precision methods. In particular, it presents an approach to characterizing large spatially clustered data sets to discover knowledge in multi-source supervised classification. The evidential structure of spatial classification is founded on the notions of equivalence relations of rough set theory. It allows expressing spatial concepts in terms of approximation space wherein a decision class can be approximated through the partition of boundary regions. The paper also identifies how approximate reasoning can be introduced by using variable precision rough sets in the context of land cover characterization. The rough set theory is applied to demonstrate an empirical application and the predictive performance is compared with popular baseline machine learning algorithms. A comparison shows that the predictive performance of the rough set rule induction is slightly higher than the decision tree and significantly outperforms the baseline models such as neural network, naïve Bayesian and support vector machine methods.
Original languageEnglish
Pages (from-to)1206-1223
Number of pages18
JournalInternational Journal of Digital Earth
Volume9
Issue number12
DOIs
StatePublished - Dec 1 2016

Keywords

  • approximate reasoning
  • granular computing
  • remote sensing
  • Rough set theory
  • soft computing

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