Authors
William Zhu, Fei-Yue Wang
Publication date
2007/6/25
Journal
IEEE transactions on knowledge and data engineering
Volume
19
Issue
8
Pages
1131-1144
Publisher
IEEE
Description
Rough set theory is a useful tool for data mining. It is based on equivalence relations and has been extended to covering-based generalized rough set. This paper studies three kinds of covering generalized rough sets for dealing with the vagueness and granularity in information systems. First, we examine the properties of approximation operations generated by a covering in comparison with those of the Pawlak's rough sets. Then, we propose concepts and conditions for two coverings to generate an identical lower approximation operation and an identical upper approximation operation. After the discussion on the interdependency of covering lower and upper approximation operations, we address the axiomization issue of covering lower and upper approximation operations. In addition, we study the relationships between the covering lower approximation and the interior operator and also the relationships …
Total citations
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Scholar articles
W Zhu, FY Wang - IEEE transactions on knowledge and data engineering, 2007