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MCS
2007
Springer

Group-Induced Vector Spaces

13 years 10 months ago
Group-Induced Vector Spaces
The strength of classifier combination lies either in a suitable averaging over multiple experts/sources or in a beneficial integration of complementary approaches. In this paper we focus on the latter and propose the use of group-induced vector spaces (GIVSs) as a way to combine unsupervised learning with classification. In such an integrated approach, the data is first modelled by a number of groups, found by a clustering procedure. Then, a proximity function is used to measure the (dis)similarity of an object to each group. A GIVS is defined by mapping an object to a vector of proximity scores, computed with respect to the given groups. In this study, we focus on a particular aspect of using GIVSs in a mode of building a trained combiner, namely the integration of generative and discriminative methods. First, in the generative step, we model the groups by simple generative models, building the GIVS space. The classification problem is then mapped in the resulting vector space,...
Manuele Bicego, Elzbieta Pekalska, Robert P. W. Du
Added 08 Jun 2010
Updated 08 Jun 2010
Type Conference
Year 2007
Where MCS
Authors Manuele Bicego, Elzbieta Pekalska, Robert P. W. Duin
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