Cost sensitive learning is the hot research area in machine learning.In practical real applications
the datasets are usually class-imbalanced
most of the samples are unlabeled
only a few of the samples are labeled
and noise samples are existed.Although some progress has been made in cost sensitive learning for such situation
it needs further solved.For that we propose a semi-supervised Laplacian support vector machine based on cost sensitive learning.On the basis of label propagation
the proposed model integrates the misclassification costs considering class-imbalance into the hinge loss and Laplacian regularization of the Laplacian support vector machine.At the same time
considering the effect on the decision hypersphere of the noise samples
we define an example-dependent cost which makes the weights of noise samples lower.The experimental results on 7 UCI
8 NASA datasets demonstrate the superiority of our proposed algorithm.
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Related Author
YANG Zi-yao
LEI Tao
GONG Mao-guo
DU Xiao-gang
WANG Meng-xi
SUN Fei-man
KONG De-yan
LIU Yang
Related Institution
Key Laboratory of Collaborative Intelligent Systems, Ministry of Education, Xidian University
School of Mathematics, Southwest Jiaotong University
Shaanxi Joint Laboratory of Artificial Intelligence, Shaanxi University of Science and Technology
School of Electronic Information and Artificial Intelligence, Shaanxi University of Science and Technology
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