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Research on SVM Multi Classification Method Based on Particle Swarm Algorithm

机译:基于粒子群算法的支持向量机多分类方法研究

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In order to solve deviation and unbalance problem generally in traditional multi-class classification, on the basis of mutual communication entropy theory and classification principle of support vector data description (SVDD), this paper designs a kind of improved locality SVDD multi-class classification algorithm, namely, EL-SVDD algorithm. This algorithm firstly takes local sample information as the carrier to calculate the mutual communication entropy parameter value; second in the multi-dimensional sphere, it classifies mutual communication entropy parameter values to place test sample data information; finally, analyze the test sample size and mutual communication entropy parameter values comprehensively, to reinterpret the C value in SVDD algorithm. Experiments show that the EL-SVDD algorithm is not only feasible, but also can effectively and steadily improve the multi-class analysis accuracy.
机译:为了解决传统多类分类中普遍存在的偏差和不平衡问题,基于互通信熵理论和支持向量数据描述(SVDD)的分类原理,设计了一种改进的局部SVDD多类分类算法。 ,即EL-SVDD算法。该算法首先以局部样本信息为载体,计算互通熵参数值。第二,在多维领域,它对相互通信的熵参数值进行分类以放置测试样本数据信息。最后,综合分析测试样本的大小和相互通信的熵参数值,重新解释SVDD算法中的C值。实验表明,EL-SVDD算法不仅可行,而且可以有效,稳定地提高多类分析的准确性。

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