DocumentCode :
1612681
Title :
Discriminant-enhanced neighborhood preserving embedding for dimensionality reduction
Author :
Yi Chai ; Zhimin Yang ; Ke Zhang ; Wenjin Xu
Author_Institution :
Coll. of Autom., Chongqing Univ., Chongqing, China
fYear :
2013
Firstpage :
255
Lastpage :
260
Abstract :
Neighborhood preserving embedding is an useful linear dimensionality reduction method by preserving neighbourhood structure of high-dimensional data. However, it takes advantage of less class information to keep away data point from different classes for better recognition. In this paper, we proposed an improved neighborhood preserving embedding dimensionality reduction approach named discriminant-enhanced neighborhood preserving embedding (DNPE). It seeks to preserve the intrinsic structure of original data by constructing the neighborhood relationship of data point in the same class and enhance the discriminability by employing maximum margin criterion. Compared to using fisher criterion, the proposed method can avoid the small sample size (SSS) problem by introducing maximum margin criterion to its objective function. To evaluate the effectiveness of the proposed method, experiments are conducted using k-nearest neighbor classifier on CMU PIE and UMIST database. The experimental results show that the proposed method performs better than some other linear methods in recognition on both databases.
Keywords :
data analysis; data reduction; data structures; pattern classification; CMU PIE; DNPE; Fisher criterion; SSS problem; UMIST database; class information; data point neighborhood relationship; data structure; discriminability enhancement; discriminant-enhanced neighborhood preserving embedding; high-dimensional data; k-nearest neighbor classifier; linear dimensionality reduction method; maximum margin criterion; neighborhood preserving embedding dimensionality reduction approach; neighbourhood structure preservation; objective function; small sample size problem; Databases; Error analysis; Kernel; Linear programming; Manifolds; Principal component analysis; Training; Class Information; Dimensionality Reduction; Maximum Margin Criterion; Neighborhood Preserving Embedding;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Chinese Automation Congress (CAC), 2013
Conference_Location :
Changsha
Print_ISBN :
978-1-4799-0332-0
Type :
conf
DOI :
10.1109/CAC.2013.6775738
Filename :
6775738
Link To Document :
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