DocumentCode
4283
Title
Hybrid Manifold Embedding
Author
Yang Liu ; Yan Liu ; Chan, Keith C. C. ; Hua, Kien
Author_Institution
Dept. of Comput., Hong Kong Polytech. Univ., Hong Kong, China
Volume
25
Issue
12
fYear
2014
fDate
Dec. 2014
Firstpage
2295
Lastpage
2302
Abstract
In this brief, we present a novel supervised manifold learning framework dubbed hybrid manifold embedding (HyME). Unlike most of the existing supervised manifold learning algorithms that give linear explicit mapping functions, the HyME aims to provide a more general nonlinear explicit mapping function by performing a two-layer learning procedure. In the first layer, a new clustering strategy called geodesic clustering is proposed to divide the original data set into several subsets with minimum nonlinearity. In the second layer, a supervised dimensionality reduction scheme called locally conjugate discriminant projection is performed on each subset for maximizing the discriminant information and minimizing the dimension redundancy simultaneously in the reduced low-dimensional space. By integrating these two layers in a unified mapping function, a supervised manifold embedding framework is established to describe both global and local manifold structure as well as to preserve the discriminative ability in the learned subspace. Experiments on various data sets validate the effectiveness of the proposed method.
Keywords
data reduction; learning (artificial intelligence); matrix algebra; pattern clustering; GC; HyME; LCDP; geodesic clustering; hybrid manifold embedding; locally conjugate discriminant projection; nonlinear explicit mapping function; supervised dimensionality reduction scheme; Algorithm design and analysis; Approximation algorithms; Data models; Learning systems; Manifolds; Principal component analysis; Training; Dimensionality reduction; geodesic clustering (GC); hybrid manifold embedding (HyME); locally conjugate discriminant projection (LCDP); supervised manifold learning; supervised manifold learning.;
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2014.2305760
Filename
6748035
Link To Document