IJITCS Vol. 8, No. 4, 8 Apr. 2016
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Rough sets, covering based rough sets, Multigranulations, Covering Based multigranulations, approximate equality
The basic rough set theory introduced by Pawlak as a model to capture imprecision in data has been extended in many directions and covering based rough set models are among them. Again from the granular computing point of view, the basic rough sets are unigranular by nature. Two types of extensions to the context of multigranular computing are done; called the optimistic and pessimistic multigranulation by Qian et al in 2006 and 2010 respectively. Combining these two concepts of covering and multigranulation, covering based multigranular models have been introduced by Liu et al in 2012. Extending the stringent concept of mathematical equality of sets rough equalities were introduced by Novotny and Pawlak in 1985. Three more types of such approximate equalities were introduced by Tripathy in 2011. In this paper we study the approximate equalities introduced by Novotny and Pawlak from the pessimistic multigranular computing point of view and establish several of their properties. These concepts and properties are shown to be useful in approximate reasoning.
B.K.Tripathy, S.C.Parida, "Covering Based Pessimistic Multigranular Rough Equalities and their Properties", International Journal of Information Technology and Computer Science(IJITCS), Vol.8, No.4, pp.52-62, 2016. DOI:10.5815/ijitcs.2016.04.07
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