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Learning mixture models with support vector machines for sequence classification and segmentation
Authors:Trinh Minh Tri Do  Thierry Artières [Author vitae]
Affiliation:LIP6, Université Pierre et Marie Curie, 8 rue du capitaine Scott, 75015, France
Abstract:This paper focuses on learning recognition systems able to cope with sequential data for classification and segmentation tasks. It investigates the integration of discriminant power in the learning of generative models, which are usually used for such data. Based on a procedure that transforms a sample data into a generative model, learning is viewed as the selection of efficient component models in a mixture of generative models. This may be done through the learning of a support vector machine. We propose a few kernels for this and report experimental results for classification and segmentation tasks.
Keywords:On-line handwriting recognition  Hidden Markov models  Support vector machine  Mixture modeling  Sequence segmentation
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