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New Mixed Kernel Functions of SVM Used in Pattern Recognition

   | 20 oct. 2016
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Cybernetics and Information Technologies
Issue Title: Special Issue on Application of Advanced Computing and Simulation in Information Systems
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eISSN:
1314-4081
Langue:
Anglais
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4 fois par an
Sujets de la revue:
Computer Sciences, Information Technology