一种新的多流形学习半监督降维框架

Xin Guo, Tie Yun, L. Qi, L. Guan
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引用次数: 2

摘要

在模式识别中,由于多个类别的数据并不在一个流形上,传统的单流形假设很难保证最佳的分类性能。当数据集包含多个类并且类的结构不同时,假设每个类位于特定的流形上是更合理的。本文提出了一种用于多流形学习的半监督降维框架。在此框架下,导出了学习数据集中多个类对应的多个流形的方法,包括标记和未标记的示例。在构造邻域图时,引入了一种基于稀疏流形聚类的相似图构造方法,使未标记点与同一流形上的其他点连接起来。实验结果验证了该框架的优越性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Semi-Supervised Dimensionality Reduction Framework for Multi-manifold Learning
In pattern recognition, traditional single manifold assumption can hardly guarantee the best classification performance, since the data from multiple classes does not lie on a single manifold. When the dataset contains multiple classes and the structure of the classes are different, it is more reasonable to assume each class lies on a particular manifold. In this paper, we propose a novel framework of semi-supervised dimensionality reduction for multi-manifold learning. Within this framework, methods are derived to learn multiple manifold corresponding to multiple classes in a data set, including both the labeled and unlabeled examples. In order to connect each unlabeled point to the other points from the same manifold, a similarity graph construction, based on sparse manifold clustering, is introduced when constructing the neighbourhood graph. Experimental results verify the advantages and effectiveness of this new framework.
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