4.5 Article

Classifier fusion in the Dempster-Shafer framework using optimized t-norm based combination rules

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ELSEVIER SCIENCE INC
DOI: 10.1016/j.ijar.2010.11.008

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Pattern recognition; Classifier ensemble; Theory of evidence; Transferable belief model; Belief functions; Cautious rule

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When combining classifiers in the Dempster-Shafer framework, Dempster's rule is generally used. However, this rule assumes the classifiers to be independent. This paper investigates the use of other operators for combining non-independent classifiers, including the cautious rule and, more generally, t-norm based rules with behavior ranging between Dempster's rule and the cautious rule. Two strategies are investigated for learning an optimal combination scheme, based on a parameterized family of t-norms. The first one learns a single rule by minimizing an error criterion. The second strategy is a two-step procedure, in which groups of classifiers with similar outputs are first identified using a clustering algorithm. Then, within- and between-cluster rules are determined by minimizing an error criterion. Experiments with various synthetic and real data sets demonstrate the effectiveness of both the single rule and two-step strategies. Overall, optimizing a single t-norm based rule yields better results than using a fixed rule, including Dempster's rule, and the two-step strategy brings further improvements. (C) 2010 Elsevier Inc. All rights reserved.

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