In this paper, concepts of information entropy and information granulation-based uncertainty measures are introduced in incomplete information/decision systems, and based on maximal consistent block technique, some variants of information entropy and information granulation are presented to measure the discernibility ability of an incomplete information system. Then, some important properties of them are discussed. From these properties, it can be shown that these proposed measures provide important approaches to measure the uncertainty ability of different knowledge in incomplete information/decision systems. And relationships among these measures are established as well. These results will be very helpful for understanding the essence of knowledge content and uncertainty measures in incomplete information systems.
Digital Object Identifier (DOI)
Sun, Lin; Xu, Jiucheng; and Xu, Tianhe
"Information Entropy and Information Granulation-based Uncertainty Measures in Incomplete Information Systems,"
Applied Mathematics & Information Sciences: Vol. 08
, Article 66.
Available at: https://dc.naturalspublishing.com/amis/vol08/iss4/66