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Dual membership SVM method based on spectral clustering

机译:基于谱聚类的双隶属支持向量机方法

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摘要

A new fuzzy support vector machine algorithm with dual membership values based on spectral clustering method is proposed to overcome the shortcoming of the normal support vector machine algorithm, which divides the training datasets into two absolutely exclusive classes in the binary classification, ignoring the possibility of “overlapping” region between the two training classes. The proposed method handles sample “overlap” efficiently with spectral clustering, overcoming the disadvantages of over-fitting well, and improving the data mining efficiency greatly. Simulation provides clear evidences to the new method.
机译:提出了一种新的基于谱聚类的具有双隶属度值的模糊支持向量机算法,克服了常规支持向量机算法的缺点。该算法将训练数据集在二元分类中分为两个绝对排他的类,而忽略了“两个培训班之间的“重叠”区域。所提出的方法通过频谱聚类有效地处理样本“重叠”,克服了拟合过度的弊端,大大提高了数据挖掘效率。仿真为新方法提供了清晰的证据。

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