Modification of particle swarm algorithm for the problem of the SVM classifier development
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The application of particle swarm algorithm and its modifications for the problem of the SVM classifier development is considered. The modification particle swarm algorithm, allowing to reduce the time required for the SVM classifier development during the search of the kernel function type, values of the kernel function parameters and value of the regularization parameter and providing high quality data classification, is offered. The experimental results confirming the efficiency of the modified particle swarm algorithm for the problem of the SVM classifier development are given.
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