Motif kernel generated by genetic programming improves remote homology and fold detection |
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Authors: | Tony Håndstad Arne JH Hestnes Pål Sætrom |
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Affiliation: | (1) Department of Computer and Information Science, Norwegian University of Science and Technology, NO-7052 Trondheim, Norway;(2) Laboratoriesenteret, Interagon AS, NO-7006 Trondheim, Norway |
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Abstract: | Background Protein remote homology detection is a central problem in computational biology. Most recent methods train support vector machines to discriminate between related and unrelated sequences and these studies have introduced several types of kernels. One successful approach is to base a kernel on shared occurrences of discrete sequence motifs. Still, many protein sequences fail to be classified correctly for a lack of a suitable set of motifs for these sequences. |
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