Article ID Journal Published Year Pages File Type
478668 European Journal of Operational Research 2010 9 Pages PDF
Abstract

Support vector machines (SVMs), that utilize a mixture of the L1L1-norm and the L2L2-norm penalties, are capable of performing simultaneous classification and selection of highly correlated features. These SVMs, typically set up as convex programming problems, are re-formulated here as simple convex quadratic minimization problems over non-negativity constraints, giving rise to a new formulation – the pq-SVM method. Solutions to our re-formulation are obtained efficiently by an extremely simple algorithm. Computational results on a range of publicly available datasets indicate that these methods allow greater classification accuracy in addition to selecting groups of highly correlated features. These methods were also compared on a new dataset assessing HIV-associated neurocognitive disorder in a group of 97 HIV-infected individuals.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science (General)
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