基于排序和消去的构件学习方法

Sheetal Reddy Pamudurthy, C. Sekhar
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引用次数: 0

摘要

在本文中,我们提出了一种分量学习方法来学习一组适合给定数据分布的高斯分量。该方法采用了一种称为OPTICS的排序和可视化技术以及多正态性测试。我们考虑了该方法在分类和聚类任务中的应用。在这里,组件用于定义数据点转换到的特征空间。在该特征空间中,使用线性支持向量机进行分类,使用支持向量聚类进行聚类。在合成数据集上展示了组件学习方法的性能及其在分类和聚类中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ordering and Elimination Based Component Learning Method
In this paper, we propose a component learning method to learn a set of Gaussian components that fit the given data distribution. An ordering and visualization technique called OPTICS and tests of multinormality are used in this method. We consider the applications of the proposed method to the tasks of classification and clustering. Here, the components are used to define a feature space to which the data points are transformed. In that feature space, classification is performed using linear support vector machines and clustering is performed using support vector clustering. The performance of the component learning method and its application to classification and clustering is demonstrated on synthetic datasets.
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