Semisupervised particle swarm optimization for classification

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Abstract

A semisupervised classification method based on particle swarm optimization (PSO) is proposed. The semisupervised PSO simultaneously uses limited labeled samples and large amounts of unlabeled samples to find a collection of prototypes (or centroids) that are considered to precisely represent the patterns of the whole data, and then, in principle of the "nearest neighborhood," the unlabeled data can be classified with the obtained prototypes. In order to validate the performance of the proposed method, we compare the classification accuracy of PSO classifier, k-nearest neighbor algorithm, and support vector machine on six UCI datasets, four typical artificial datasets, and the USPS handwritten dataset. Experimental results demonstrate that the proposed method has good performance even with very limited labeled samples due to the usage of both discriminant information provided by labeled samples and the structure information provided by unlabeled samples. © 2014 Xiangrong Zhang et al.

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Zhang, X., Jiao, L., Paul, A., Yuan, Y., Wei, Z., & Song, Q. (2014). Semisupervised particle swarm optimization for classification. Mathematical Problems in Engineering, 2014. https://doi.org/10.1155/2014/832135

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