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A Novel Support Vector Machine with Globality-Locality Preserving

机译:一种新的支持向量机,具有全局 - 地方保存

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Support vector machine (SVM) is regarded as a powerful method for pattern classification. However, the solution of the primal optimal model of SVM is susceptible for class distribution and may result in a nonrobust solution. In order to overcome this shortcoming, an improved model, support vector machine with globality-locality preserving (GLPSVM), is proposed. It introduces globality-locality preserving into the standard SVM, which can preserve the manifold structure of the data space. We complete rich experiments on the UCI machine learning data sets. The results validate the effectiveness of the proposed model, especially on the Wine and Iris databases; the recognition rate is above 97% and outperforms all the algorithms that were developed from SVM.
机译:支持向量机(SVM)被视为模式分类的强大方法。然而,SVM原始最佳模型的解决方案易于阶级分布,可能导致非侦察解决方案。为了克服这种缺点,提出了一种改进的模型,支持具有全球局部定位(GLPSVM)的传染媒介机器。它介绍了将全局局部定位进入标准SVM,这可以保留数据空间的歧管结构。我们在UCI机器学习数据集上完成了丰富的实验。结果验证了拟议模型的有效性,特别是在葡萄酒和虹膜数据库上;识别率高于97%,优于从SVM开发的所有算法。

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