요약
Abstract
1. Introduction
2. Theory Part
2.1 Support Vector Machines(SVM)
2.2 Multiple Kernel SVM (MK-SVM)
2.3 Generalized Multiple Kernel Learning(GMKL)
2.4 Principal Component analysis (PCA)
2.5 k-Fold Cross Validation
3. Materials
4. Experimental Methods and Results
5. Conclusion
Acknowledgments
참고문헌