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FSKD
2008
Springer

A Hybrid Re-sampling Method for SVM Learning from Imbalanced Data Sets

14 years 15 days ago
A Hybrid Re-sampling Method for SVM Learning from Imbalanced Data Sets
Support Vector Machine (SVM) has been widely studied and shown success in many application fields. However, the performance of SVM drops significantly when it is applied to the problem of learning from imbalanced data sets in which negative instances greatly outnumber the positive instances. This paper analyzes the intrinsic factors behind this failure and proposes a suitable re-sampling method. We re-sample the imbalance data by using variable SOM clustering so as to overcome the flaws of the traditional re-sampling methods, such as serious randomness, subjective interference and information loss. Then we prune the training set by means of K-NN rule to solve the problem of data confusion, which improves the generalization ability of SVM. Experiment results show that our method obviously improves the performance of the SVM on imbalanced data sets.
Peng Li, Pei-Li Qiao, Yuan-Chao Liu
Added 09 Nov 2010
Updated 09 Nov 2010
Type Conference
Year 2008
Where FSKD
Authors Peng Li, Pei-Li Qiao, Yuan-Chao Liu
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