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Reviewed article

A Generalization of the Classic Combination Rules to DSm Hyper-power Sets

How to cite:
Milan Daniel
"A Generalization of the Classic Combination Rules to DSm Hyper-power Sets"
Information & Security: An International Journal,
20,
(2006):
50-64.
http://dx.doi.org/10.11610/isij.2002

A Generalization of the Classic Combination Rules to DSm Hyper-power Sets

Authors:

Milan Daniel

Source:

Information & Security: An International Journal,
Volume: 20,
p.50-64
(2006)

Abstract:

Dempster’s rule, Yager’s rule and Dubois-Prade’s rule for belief functions combination are generalized to be applicable to hyper-power sets according to the DSm theory. A comparison of the rules with DSm rule of combination is presented.

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