Fuzzy Classification Aggregation
Abstract
We consider the problem where a set of individuals has to classify m objects into p categories and does so by aggregating the individual classifications. We show that if m≥ 3, m≥ p≥ 2, and classifications are fuzzy, that is, objects belong to a category to a certain degree, then an optimal and independent aggregator rule that satisfies a weak unanimity condition belongs to the family of Weighted Arithmetic Means. We also obtain characterization results for m= p= 2.
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