Uncertainty measurement for interval-valued decision systems based on extended conditional entropy
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摘要
Uncertainty measures can supply new points of view for analyzing data and help us to disclose the substantive characteristics of data sets. Some uncertainty measures for single-valued information systems or single-valued decision systems have been developed. However, there are few studies on the uncertainty measurement for interval-valued information systems or interval-valued decision systems. This paper addresses the uncertainty measurement problem in interval-valued decision systems. An extended conditional entropy is proposed in interval-valued decision systems based on possible degree between interval values. Consequently, a concept called rough decision entropy is introduced to evaluate the uncertainty of an interval-valued decision system. Besides, the original approximation accuracy measure proposed by Pawlak is extended to deal with interval-valued decision systems and the concept of interval approximation roughness is presented. Experimental results demonstrate that the rough decision entropy measure and the interval approximation roughness measure are effective and valid for evaluating the uncertainty measurement of interval-valued decision systems. Experimental results also indicate that the rough decision entropy measure outperforms the interval approximation roughness measure.
论文关键词:Uncertainty measurement,Interval-valued decision systems,Rough set theory,Similarity degree,Conditional entropy,Rough decision entropy
论文评审过程:Received 18 May 2011, Revised 24 August 2011, Accepted 23 October 2011, Available online 2 November 2011.
论文官网地址:https://doi.org/10.1016/j.knosys.2011.10.013