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Support Vector Machines for Multi-Class Pattern Recognition Based on Improved Voting Strategy

机译:基于改进投票策略的支持向量机多类模式识别

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摘要

The improved voting strategy for pairwise classification of multi-class support vector machine (MSVM) is proposed. The new voting strategy can increase recognition accuracy and resolve the unclassifiable region problems caused by conventional pairwise classification. The improved voting value equals to the traditional voting value plus the tuning function. For the data in the classifiable regions, the classification results using improved voting strategy are the same as that using the traditional one. However, the data in the unclassifiable region can be determined by the tuning function. By computer simulations using four UCI data sets, the superiorities of the presented multi-class strategy are demonstrated.
机译:提出了一种改进的投票策略,用于多类支持向量机(MSVM)的成对分类。新的投票策略可以提高识别的准确性,并解决传统的成对分类所引起的无法分类的区域问题。改进的投票值等于传统投票值加上调整功能。对于可分类区域中的数据,使用改进的投票策略的分类结果与使用传统方法的分类结果相同。但是,无法分类区域中的数据可以通过调整功能来确定。通过使用四个UCI数据集的计算机仿真,证明了所提出的多类策略的优越性。

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