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Reduced Analytical Dependency Modeling for Classifier Fusion

Andy Jinhua Ma and Pong Chi Yuen

Department of Computer Science, Hong Kong Baptist University Kowloon Tong, Hong Kong
jhma@comp.hkbu.edu.hk
pcyuen@comp.hkbu.edu.hk

Abstract. This paper addresses the independent assumption issue in classifier fusion process. In the last decade, dependency modeling techniques were developed under some specific assumptions which may not be valid in practical applications. In this paper, using analytical functions on posterior probabilities of each feature, we propose a new framework to model dependency without those assumptions. With the analytical dependency model (ADM), we give an equivalent condition to the independent assumption from the properties of marginal distributions, and show that the proposed ADM can model dependency. Since ADM may contain infinite number of undetermined coefficients, we further propose a reduced form of ADM, based on the convergent properties of analytical functions. Finally, under the regularized least square criterion, an optimal Reduced Analytical Dependency Model (RADM) is learned by approximating posterior probabilities such that all training samples are correctly classified. Experimental results show that the proposed RADM outperforms existing classifier fusion methods on Digit, Flower, Face and Human Action databases.

Keywords: Dependency modeling, analytical function, classifier fusion, pattern classification

LNCS 7574, p. 792 ff.

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