observed samples always arrive in the form of chunks stream
traditional batch distance metric algorithms can hardly work well in such scenarios.This paper proposes a novel semi-supervised chunk incremental metric learning algorithm on the basis of the pairwise constraints.One general model is given to learn metric incrementally on the arriving chunks at first with its limitation of over-fitting overcame by utilizing extended constraint sets.Then
a manifold regularization term is used to keep locality adjacency structure of chunks during metric learning.Experimental results indicate superiorities of our algorithm
which obtains better accuracy and lower computation costs than existing incremental metric learning algorithms
and needs much less storage costs than batch ones.
Autoencoder and Hypergraph-Based Semi-Supervised Broad Learning System
Dimensionality Reduction of Remote Sensing Image Using Semi-Supervised Discriminative Locality Alignment
Global and Local Preserving Based Semi-supervised Support Vector Machine
Related Author
WANG Xue-song
ZHANG Han-lin
CHENG Yu-hu
侯翠琴
焦李成
WANG Xue-song
HU Hui-juan
CHENG Yu-hu
Related Institution
Engineering Research Center of Intelligent Control for Underground Space, Ministry of Education
School of Information and Control Engineering, China University of Mining and Technology
Key Laboratory of Intelligent Perception and Image Understanding of Ministry of Education of China, Institute of Intelligent Information Processing,Xidian University
School of Information and Electrical Engineering, China University of Mining and Technology
School of Information Engineering,Jiangnan University