Multiple birth least squares support vector machine for multi-class classification
2016-06-10journal 2016Unverified0· sign in to hype
Su-Gen Chen1, 2•Xiao-Jun Wu1
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ReproduceAbstract
Least squares twin support vector machine (LSTSVM) was initially designed for binary classification. However, practical problems often require the discrimina-tion more than two categories. To tackle multi-class classi-fication problem, a novel algorithm, called multiple birth least squares support vector machine (MBLSSVM), is proposed. Our MBLSSVM solves K quadratic programming problems (QPPs) to obtain K hyperplanes, each problem is similar to binary LSTSVM. Comparison against the Multi-LSTSVM, Multi-TWSVM, MBSVM and our MBLSSVM on both UCI datasets and ORL, YALE face datasets illustrates the effectiveness of the proposed method.