Abstract

Employing the classic optimization solver to train a multiclass support vector machine (SVM) requires prohibitive training time as the sample size and number of categories increase. It has been proposed to develop the corresponding decomposition algorithm (DA) as it is efficient for training SVMs. However, the dual problem of multiclass SVM comprises complex constraints that complicate DA design, so no corresponding DA has yet been developed. We propose a multicycle disassembly-based DA (MCD-DA) to efficiently solve the training problem of multiclass SVM. First, a graph model is constructed to re-express the constraints in multiclass SVM. Then, the original complex feasible region is partitioned into several simple sub-feasible regions, and multiple cycle-based disassembly strategies are designed to update the working variables analytically within each specific sub-feasible region. We mathematically verify that MCD-DA can stop within a finite number of cycle disassemblies and reach the τ-optimal solution satisfying relaxed Karush–Kuhn–Tucker conditions. Remarkably, MCD-DA as a universal decomposition algorithm can be used to solve many other SVM variants, including C-SVM, v-SVM, and one-class SVM. Experimental results using six UCI datasets demonstrate that MCD-DA outperforms typical optimization algorithms for more sample cases.

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