Min-based fusion of possibilistic networks
نویسندگان
چکیده
Motivations Important problem : databases, expert opinions pooling, preference agregations, etc. Why merging? exploit complementarities between the sources, get a global and coherent point of view, reduce imprecision, deals with redunduncies, etc.
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