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Novel Design of Decision-Tree-Based Support Vector Machines Multi-class Classifier

机译:基于决策树的支持向量机多分类器的新颖设计

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摘要

Designing the hierarchical structure is a key issue for the decision-tree-based (DTB) support vector machines multi-class classification. Inter-class separability is an important basis for designing the hierarchical structure. A new method based on vector projection is proposed to measure inter-class separability. Furthermore, two different DTB support vector multi-class classifiers are designed based on the inter-class separability: one is in the structure of DTB-balanced branches and another is in the structure of DTB-one against all. Experiment results on three large-scale data sets indicate that the proposed method speeds up the decision-tree-based support vector machines multi-class classifiers and yields higher precision.
机译:对于基于决策树(DTB)的支持向量机多类分类,设计分层结构是一个关键问题。类间可分离性是设计层次结构的重要基础。提出了一种基于矢量投影的类间可分性度量方法。此外,基于类间的可分离性,设计了两种不同的DTB支持向量多类分类器:一种是DTB平衡分支的结构,另一种是DTB的结构,一个针对所有人。在三个大型数据集上的实验结果表明,该方法加快了基于决策树的支持向量机的多类分类器的速度,并产生了更高的精度。

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