Research on Data Classification Method of Optimized Support Vector Machine Based on Gray Wolf Algorithm

Author:

Ma Jinqiang1,Fan Linchang1,Tian Weijia2,Miao Zhihong1

Affiliation:

1. China People's Police University, China

2. Chengdu Public Security Bureau, China

Abstract

The data classification method based on support vector machine (SVM) has been widely used in various studies as a non-linear, high precision, and good generalization ability machine learning method. Among them, the kernel function and its parameters have a great impact on the classification accuracy. In order to find the optimal parameters to improve the classification accuracy of SVM, this paper proposes a data multi-classification method based on gray wolf algorithm optimized SVM(GWO-SVM). In this paper, the iris data set is used to test the performance of GWO-SVM, and the classification result is compared with those based on genetic algorithm (GA), particle swarm optimization (PSO) and the original SVM model. The test results show that the GWO-SVM model has a higher recognition and classification accuracy than the other three models, and has the shortest running time, which has obvious advantages and can effectively improve the classification accuracy of SVM. This method has practical significance in image classification, text classification, and fault detection.

Publisher

IGI Global

Subject

Computer Networks and Communications

Reference19 articles.

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