Title :
Similarity-balanced Discriminant Neighborhood Embedding
Author :
Chuntao Ding ; Li Zhang ; Yaping Lu ; Shuping He
Author_Institution :
Sch. of Comput. Sci. & Technol., Provincial Key Lab. for Comput. Inf. Process., Suzhou, China
Abstract :
The idea that with the help of proper dimensionality reduction, trying to make the samples with the same label be compact and the ones with the different labels be separate after projection, is introduced into classification problems with high-dimensional data. Based on the analysis of the drawbacks of Discriminant Neighborhood Embedding (DNE) and Locality-Based Discriminant Neighborhood Embedding (LDNE), being the two relatively successful Locally Discriminant Analysis methods proposed in recent years, this paper proposes a method called Similarity-balanced Discriminant Neighborhood Embedding (SBDNE). When constructing the adjacent graph, SBDNE fully takes into account the geometric construction of manifold and the problem of imbalance between the intra-class points and the inter-class points. By endowing these two kinds of samples with different similarities and selecting the near neighbors according to the similarity matrix, not only the structure in the original space can be preserved more efficiently, but also the choice of discriminative information increases. The method proposed here has a better recognition with comparisons to some classical methods, which fully shows that SBDNE method has the capacity to efficiently solve the classification problem.
Keywords :
data reduction; graph theory; pattern classification; LDNE; SBDNE; adjacent graph; classification problems; dimensionality reduction; discriminative information; geometric manifold construction; high-dimensional data; interclass points; intraclass points; locality-based discriminant neighborhood embedding; locally discriminant analysis methods; similarity-balanced discriminant neighborhood embedding; Conferences; Joints; Neural networks; adjacent graph; discriminant neighborhood embedding; inter-class; intra-class;
Conference_Titel :
Neural Networks (IJCNN), 2014 International Joint Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4799-6627-1
DOI :
10.1109/IJCNN.2014.6889611