Abstract
Managing conflict in Dempster–Shafer theory is a popular topic. In this article, we propose a novel weighted evidence combination rule based on improved entropy function. This newly proposed approach can be mainly divided into two steps. First, the initial weight will be determined on the basis of the distance of evidence. Then, this initial weight will be modified using improved entropy function. This new method converges faster when handling high conflicting evidences and greatly reduces uncertainty of decisions, which can be demonstrated by a numerical example where the belief degree is raised up to 0.9939 when five evidences are in conflict, an application in faulty diagnosis where belief degree is increased hugely from 0.8899 to 0.9416 when compared with our previous works, and a real-life medical diagnosis application where the uncertainty of decision is reduced to nearly 0 and the belief degree is raised up to 0.9989.
Highlights
Information fusion technology is a powerful tool to analyze and handle multi-source uncertain information comprehensively
One of the most important is that D-S theory will fail to fuse highly conflicting evidences and will cause counter-intuitive results.[16,17,18,19]
In section ‘‘Real-life medical application,’’ we show a real-life medical diagnosis application
Summary
Information fusion technology is a powerful tool to analyze and handle multi-source uncertain information comprehensively. Still for the two BOEs, S1 and S2 above, we calculate the uncertainty by means of the newly proposed eÀÀn2À02tÀ:0r41o:Ã4p24ÃyÁloÞ g+f2uÀnÀ2Àc02À:t40i1o:Ã6n23Ã,ÁloÁgw+2eÀÀ202ÀÀc:6a10Ãn:624ÁÃÁgloe=gt 23ÀE:2502iÀ(5:6S511Ã9)23=aÁnÁdð=ÀE30i:(:14S4Ã20l)o9=g.2 The classical Dempster’s1 rule is utilized to combine WAM(m) for n À 1 times[22] and the final combined results are obtained in favor of making a better decision In this experiment part, we provide a numerical example to demonstrate the efficiency and effectiveness of this newly proposed novel weighted evidence combination rule.
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