Title :
Neighborhood preserving embedding
Author :
He, Xiaofei ; Cai, Deng ; Yan, Shuicheng ; Zhang, Hong-Jiang
Author_Institution :
Dept. of Comput. Sci., Chicago Univ., IL
Abstract :
Recently there has been a lot of interest in geometrically motivated approaches to data analysis in high dimensional spaces. We consider the case where data is drawn from sampling a probability distribution that has support on or near a submanifold of Euclidean space. In this paper, we propose a novel subspace learning algorithm called neighborhood preserving embedding (NPE). Different from principal component analysis (PCA) which aims at preserving the global Euclidean structure, NPE aims at preserving the local neighborhood structure on the data manifold. Therefore, NPE is less sensitive to outliers than PCA. Also, comparing to the recently proposed manifold learning algorithms such as Isomap and locally linear embedding, NPE is defined everywhere, rather than only on the training data points. Furthermore, NPE may be conducted in the original space or in the reproducing kernel Hilbert space into which data points are mapped. This gives rise to kernel NPE. Several experiments on face database demonstrate the effectiveness of our algorithm
Keywords :
computational geometry; data analysis; learning (artificial intelligence); principal component analysis; probability; Euclidean space; data manifold learning algorithm; face database; kernel Hilbert space; neighborhood preserving embedding; principal component analysis; probability distribution; subspace learning algorithm; Asia; Computer science; Computer vision; Data analysis; Helium; Kernel; Linear discriminant analysis; Principal component analysis; Sampling methods; Training data;
Conference_Titel :
Computer Vision, 2005. ICCV 2005. Tenth IEEE International Conference on
Conference_Location :
Beijing
Print_ISBN :
0-7695-2334-X
DOI :
10.1109/ICCV.2005.167