A parameterless mixture model for large margin classification

L. Torres, C. Castro, A. Braga
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引用次数: 3

Abstract

This paper presents a geometrical approach for obtaining large margin classifiers. The method aims at exploring the geometrical properties of the dataset from the structure of a Gabriel graph, which represents pattern relations according to a given distance metric, such as the Euclidean distance. Once the graph is generated, geometric vectors, analogous to SVM's support vectors are obtained in order to yield the final large margin solution from a mixture model approach. A preliminary experimental study with five real-world benchmarks showed that the method is promising.
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大余量分类的无参数混合模型
本文提出了一种获取大边缘分类器的几何方法。该方法旨在从加布里埃尔图的结构探索数据集的几何属性,加布里埃尔图根据给定的距离度量(如欧几里得距离)表示模式关系。一旦图形生成,几何向量,类似于支持向量机的支持向量获得,以产生最终的大余量解决方案,从混合模型的方法。初步的实验研究与五个现实世界的基准表明,该方法是有前途的。
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