Knowledge embedded transfer twin support vector machine

被引:0
|
作者
Wang H.-Y. [1 ]
Geng L. [1 ]
Ni T.-G. [1 ]
Wang C. [1 ]
机构
[1] School of Information, Changzhou University, Changzhou
来源
Kongzhi yu Juece/Control and Decision | 2019年 / 34卷 / 03期
关键词
Class-imbalance data; Classification; Transfer learning; Twin support vector machines;
D O I
10.13195/j.kzyjc.2017.1185
中图分类号
学科分类号
摘要
A twin support vector machines (TwinSVM) performs better than a support vector machine (SVM) in dealing with the class-imbalanced classification problem. However, the TwinSVM has weak generalization abilities when there are not enough training data. Therefore, a knowledge embedded transfer twin support vector machine (KE-T-TwinSVM) is proposed. The KE-T-TwinSVM inherits the characteristic of the TwinSVM and fully considers the data of target domain as well as the knowledge of source domain by leveraging the knowledge of source domain in the target domain. The experimental results show that the proposed KE-T-TwinSVM has better performance compared with the traditional classifiers in the situation of insufficient data and class-imbalanced data. © 2019, Editorial Office of Control and Decision. All right reserved.
引用
收藏
页码:519 / 526
页数:7
相关论文
共 22 条
  • [1] Zafeiriou S.F., Tefas A., Pitas I., Minimum class variance support vector machines, IEEE Trans on Image Processing, 16, 10, pp. 2551-2564, (2007)
  • [2] Zhang Z., Han D.Q., Yang Y., Image segmentation based on evidential Markov random field model, Control and Decision, 32, 9, pp. 1607-1613, (2017)
  • [3] Pan S.J., Yang Q., A survey on transfer learning, IEEE Trans on Knowledge and Data Engineering, 22, 10, pp. 1345-1359, (2010)
  • [4] Wu Q.Y., Wu H.R., Zhou X.M., Et al., Online transfer learning with multiple homogeneous or heterogeneous sources, IEEE Trans on Knowledge and Data Engineering, 29, 7, pp. 1494-1507, (2017)
  • [5] Pan S.J., Tsang I.W., Kwok J.T., Et al., Domain adaptation via transfer component analysis, IEEE Trans on Neural Networks, 22, 2, pp. 199-210, (2011)
  • [6] Quanz B., Huan J., Large margin transductive transfer learning, Proc of the 18th ACM Conf on Information and Knowledge Management, pp. 1327-1336, (2009)
  • [7] Xu M., Wang S.T., Gu X., TL-SVM: A transfer learning algorithm, Control and Decision, 29, 1, pp. 141-146, (2014)
  • [8] Vapnik V., Statistical Learning Theory, pp. 339-350, (1998)
  • [9] Ramentol E., Caballero Y., Bello R., Et al., SMOTE-RSB: A hybrid preprocessing approach based on oversampling and undersampling for high imbalanced data-Sets using SMOTE and rough sets theory, Knowledge and Information Systems, 33, 2, pp. 245-265, (2012)
  • [10] Lopez V., Fernandez A., Jesus M., Et al., A hierarchical genetic fuzzy system based on genetic programming for addressing classification with highly imbalanced and borderline datasets, Knowledge Based Systems, 38, pp. 85-104, (2013)