2014
DOI: 10.1007/978-3-319-09192-1_9
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Supervised Selective Kernel Fusion for Membrane Protein Prediction

Abstract: Abstract. Membrane protein prediction is a significant classification problem, requiring the integration of data derived from different sources such as protein sequences, gene expression, protein interactions etc. A generalized probabilistic approach for combining different data sources via supervised selective kernel fusion was proposed in our previous papers. It includes, as particular cases, SVM, Lasso SVM, Elastic Net SVM and others. In this paper we apply a further instantiation of this approach, the Supe… Show more

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Cited by 3 publications
(1 citation statement)
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“…Modern methods of machine learning in the construction of decision rules are based on measures of object comparison and allow us to automatically choose the most suitable ones in the training process, improving the quality of the solution of the problem [10]. The great complexity of training is due to the necessity of multiple comparison of long signals in the calculation of a whole series of matrices of their pairwise dissimilarity (for different electrodes, different types of preprocessing, different values of the parameters of the comparison algorithm), choosing the most suitable of which is not possible a priori.…”
Section: Introductionmentioning
confidence: 99%
“…Modern methods of machine learning in the construction of decision rules are based on measures of object comparison and allow us to automatically choose the most suitable ones in the training process, improving the quality of the solution of the problem [10]. The great complexity of training is due to the necessity of multiple comparison of long signals in the calculation of a whole series of matrices of their pairwise dissimilarity (for different electrodes, different types of preprocessing, different values of the parameters of the comparison algorithm), choosing the most suitable of which is not possible a priori.…”
Section: Introductionmentioning
confidence: 99%