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Granular Support Vector Machines Based on Granular Computing, Soft Computing and Statistical Learning
[thesis]
2006
With emergence of biomedical informatics, Web intelligence, and E-business, new challenges are coming for knowledge discovery and data mining modeling problems. In this dissertation work, a framework named Granular Support Vector Machines (GSVM) is proposed to systematically and formally combine statistical learning theory, granular computing theory and soft computing theory to address challenging predictive data modeling problems effectively and/or efficiently, with specific focus on binary
doi:10.57709/1059415
fatcat:6xxeg56dhrhoreixjkgibubryy