Semisupervised Dimensionality Reduction and Classification Through Virtual Label Regression


Autoria(s): Nie, Feiping; Xu, Dong; Li, Xuelong; Xiang, Shiming
Data(s)

01/06/2011

Resumo

Semisupervised dimensionality reduction has been attracting much attention as it not only utilizes both labeled and unlabeled data simultaneously, but also works well in the situation of out-of-sample. This paper proposes an effective approach of semisupervised dimensionality reduction through label propagation and label regression. Different from previous efforts, the new approach propagates the label information from labeled to unlabeled data with a well-designed mechanism of random walks, in which outliers are effectively detected and the obtained virtual labels of unlabeled data can be well encoded in a weighted regression model. These virtual labels are thereafter regressed with a linear model to calculate the projection matrix for dimensionality reduction. By this means, when the manifold or the clustering assumption of data is satisfied, the labels of labeled data can be correctly propagated to the unlabeled data; and thus, the proposed approach utilizes the labeled and the unlabeled data more effectively than previous work. Experimental results are carried out upon several databases, and the advantage of the new approach is well demonstrated.

Identificador

http://ir.opt.ac.cn/handle/181661/8570

http://www.irgrid.ac.cn/handle/1471x/146732

Idioma(s)

英语

Palavras-Chave #电子、电信技术::信号与模式识别 #电子、电信技术::计算机应用其他学科(含图像处理) #Dimensionality reduction #label propagation #label regression #semisupervised learning #subspace learning
Tipo

期刊论文