Computer Science ›› 2014, Vol. 41 ›› Issue (2): 253-256.

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New Evaluation Model for Incomplete Interval-valued Information System Based on Improved Dominance Relations

WANG Bin,SHAO Ming-wen,WANG Jin-he and ZHANG Jun-hu   

  • Online:2018-11-14 Published:2018-11-14

Abstract: Dominance-based rough set approach is an important method to study incomplete interval-valued information systems.To solve outstanding problems in incomplete interval-valued information systems,we proposed two new dominant relations-the upper-limit dominance relation and the similarity dominance relation.Based on these two relations,we studied object ranking and uncertainty measurement,and showed the difference and relationship between the two proposed dominance relations.Examples were provided to substantiate the proposed concept.

Key words: Dominance-based rough set approach,Incomplete interval-valued information system,Dominance relation,Object ordering,Uncertainty measure

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