References
1. Vapnik V. The nature of statistical learning theory. New York, USA: Springer-Verlag, 1995
2. Chang C C, Chien L J, Lee Y J. A novel framework for multi-class classification via ternary smooth support vector machine. Pattern Recognition, 2011, 44: 1235 -1244
3. Ding S F, Hua X P, Yu J Z. An overview on nonparallel hyperplane support vector machine algorithms. Neural Computing and Applications, 2014, 25(5): 975 -982
4. Lazri M, Ameur S. Combination of support vector machine: artificial neural network and random forest for improving the classification of convective and stratiform rain using spectral
features of SEVIRI data. Atmospheric Research, 2018, 203: 118 -129
5. Lee Y J, Mangarasia O L. SSVM: a smooth support vector machine for classification. Computational Optimization and Applications, 2001, 20: 5 -22
6. Liu Y F, Pi D C. Ensemble kernel method: SVM classification based on game theory. Journal of Systems Engineering and Electronics, 2016, 27: 251 -259
7. Meier T B, Desphande A S, Vergun S, et al. Support vector machine classification and characterization of age-related reorganization of functional brain networks. NeuroImage, 2012,
60: 601 -613
8. Li D W, Tian Y J. Twin support vector machine in linear programs. Procedia Computer Science, 2014, 29: 1770 -1778
9. Yuan Y B, Fan W, Pu D. Spline function smooth support vector machine for classification. Journal of Industrial and Management Optimization, 2007, 3: 529 -542
10. Ding S F, Huang H J, Xu X Z, et al. Polynomial smooth twin support vector machines. Applied Mathematics and Information Sciences, 2014, 8(4): 2063 -2071
11. Chen X B, Yang J, Liang J, et al. Smooth twin support vector regression. Neural Computing and Applications, 2012, 21: 505 -513
12. Mathieu W, Mario V. Support vector machine regression for project control forecasting. Automation in Construction, 2014, 47: 92 -106
13. Yang G Z, Wang H F, Qian H, et al. Tidal current short-term prediction based on support vector regression. IOP Conference Series: Materials Science and Engineering, 2017, 199: 1 -9
14. Li K L, Xie J, Sun X. Multi-class text categorization based on LDA and SVM. Procedia Engineering, 2011, 15: 1963 -1967
15. Wang T Y, Chiang H M. Fuzzy support vector machine for multi-class text categorization. Information Processing and Management, 2007, 43(4): 914 -929
16. Chandaka S. Support vector machines employing cross-correlation for emotional speech recognition. Measurement, 2009, 42 (4): 611 -618
17. Yang Z, Mu X D, Zhao F A. Scene classification of remote sensing image based on deep network grading transferring. Optik, 2018, 168: 127 -133
18. Lin K C, Chen S Y, Hung J C. Botnet detection using support vector machines with artificial fish swarm algorithm. Journal of Applied Mathematics, 2017, 2014: 1 -9
19. Xiao J L, Gao X, Kong Q J, et al. More robust and better: a multiple kernel support vector machine ensemble approach for traffic incident detection. Journal of Advanced Transportation,
2014, 48(7): 858 -875
20. Yuan Y B, Yan J, Xu C. Polynomial smooth support vector machine: PSSVM. Chinese Journal of Computers, 2005, 28: 9 -17
21. Bertsekas D P. Nonlinear programming. MA, USA: Athena Scientific, 1999
22. Dennis J E, Schnabel R B. Numerical methods for unconstrained optimization and nonlinear equations. New Jersey, USA: Englewood Cliffs, 1983 |