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Support Vector Machine Implementations for Classification Clustering

机译:支持向量机的分类和聚类实现

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摘要

BackgroundWe describe Support Vector Machine (SVM) applications to classification and clustering of channel current data. SVMs are variational-calculus based methods that are constrained to have structural risk minimization (SRM), i.e., they provide noise tolerant solutions for pattern recognition. The SVM approach encapsulates a significant amount of model-fitting information in the choice of its kernel. In work thus far, novel, information-theoretic, kernels have been successfully employed for notably better performance over standard kernels. Currently there are two approaches for implementing multiclass SVMs. One is called external multi-class that arranges several binary classifiers as a decision tree such that they perform a single-class decision making function, with each leaf corresponding to a unique class. The second approach, namely internal-multiclass, involves solving a single optimization problem corresponding to the entire data set (with multiple hyperplanes).
机译:背景我们描述了支持向量机(SVM)应用程序对通道当前数据的分类和聚类。 SVM是基于变分演算的方法,受约束具有结构风险最小化(SRM),即它们为模式识别提供了耐噪声的解决方案。 SVM方法在选择其内核时会封装大量模型拟合信息。到目前为止,在工作中,已经成功采用了新颖的,基于信息论的内核,以取得比标准内核明显更好的性能。当前,有两种实现多类SVM的方法。一种被称为外部多类,将多个二进制分类器布置为决策树,以便它们执行单类决策制定功能,每个叶子对应一个唯一类。第二种方法,即内部多类,涉及解决对应于整个数据集(具有多个超平面)的单个优化问题。

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