A New Composition Method of Admissible Support Vector Kernel Based on Reproducing Kernel
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A New Composition Method of Admissible Support Vector Kernel Based on Reproducing Kernel

Authors: Wei Zhang, Xin Zhao, Yi-Fan Zhu, Xin-Jian Zhang

Abstract:

Kernel function, which allows the formulation of nonlinear variants of any algorithm that can be cast in terms of dot products, makes the Support Vector Machines (SVM) have been successfully applied in many fields, e.g. classification and regression. The importance of kernel has motivated many studies on its composition. It-s well-known that reproducing kernel (R.K) is a useful kernel function which possesses many properties, e.g. positive definiteness, reproducing property and composing complex R.K by simple operation. There are two popular ways to compute the R.K with explicit form. One is to construct and solve a specific differential equation with boundary value whose handicap is incapable of obtaining a unified form of R.K. The other is using a piecewise integral of the Green function associated with a differential operator L. The latter benefits the computation of a R.K with a unified explicit form and theoretical analysis, whereas there are relatively later studies and fewer practical computations. In this paper, a new algorithm for computing a R.K is presented. It can obtain the unified explicit form of R.K in general reproducing kernel Hilbert space. It avoids constructing and solving the complex differential equations manually and benefits an automatic, flexible and rigorous computation for more general RKHS. In order to validate that the R.K computed by the algorithm can be used in SVM well, some illustrative examples and a comparison between R.K and Gaussian kernel (RBF) in support vector regression are presented. The result shows that the performance of R.K is close or slightly superior to that of RBF.

Keywords: admissible support vector kernel, reproducing kernel, reproducing kernel Hilbert space, Green function, support vectorregression

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1331919

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References:


[1] J. Mercer, Ed., Functions of Positive and Negative Type and Their Connection with The Theory of Integral Equations, ser. Philosophical Transactions of the Royal Society, London, 1909, vol. A, 209.
[2] V. Vapnik, The Nature of Statistical Learning Theory. New York: Springer-Verlag, 1995.
[3] G. Bloch, F. Lauer, G. Colin, and Y. Chamaillard, "Support vector regression from simulation data and few experimental samples," Information Sciences, vol. 178, pp. 3813-3827, 2008.
[4] V. Blanz, B. Sch¨olkopf, H. B¨ulthoff, and C. J. Burges, "Comparison of view-based object recognition algorithms using realistic 3d models," in Artificial Neural NetworksłICANN-96, C. v. d. Malsburg, W. v. Seelen, J. C. Vorbr¨uggen, and B. Sendhoff, Eds., vol. 1112. Berlin: Springer Lecture Notes in Computer Science, 1996.
[5] C. J. Burges and B. Sch¨olkopf, "Improving the accuracy and speed of support vector learning machines," in Advances in Neural Information Processing Systems, vol. 9. Cambridge, MA: MIT Press, 1997, pp. 375-381.
[6] B. Sch¨olkopf, K.-K. Sung, C. J. Burges, F. Girosi, P. Niyogi, T. Poggio, and V. Vapnik, "Comparing support vector machines with gaussian kernels to radial basis function classifiers," IEEE Transactions on Signal Processing, vol. 45, pp. 2758-2765, 1997.
[7] E. E. Osuna, R. Freund, and F. Girosi, "Training support vector machines: An application to face detection," in IEEE Conference on Computer Vision and Pattern Recognition, 1997, pp. 130-136.
[8] W. Kienzle, G. Bakir, M. Franz, and B. Sch¨olkopf, "Face detectionłefficient and rank deficient," in Advances in Neural Information Processing Systems, Y. Weiss, Ed., vol. 17. MIT Press, 2005, pp. 673-680.
[9] J.-B. Gao, S. R. Gunn, and C. J. Harris, "Mean field method for the support vector machine regression," Neurocomputing, vol. 50, pp. 391- 405, 2003.
[10] M. A. Mohandes, T. O. Halawani, S. Rehman, and A. A. Hussain, "Support vector machines for wind speed prediction," Renewable Energy, vol. 29, no. 6, pp. 939-947, 2004.
[11] W.-W. He, Z.-Z. Wang, and H. Jiang, "Model optimizing and feature selecting for support vector regression in time series forecasting," Neurocomputing, vol. 73, no. 3, pp. 600-611, 2008.
[12] F. Pan, P. Zhu, and Y. Zhang, "Metamodel-based lightweight design of b-pillar with twb structure via support vector regression," Computers and Structures, vol. 88, pp. 36-44, 2010.
[13] C. J. Burges, "A tutorial on support vector machines for pattern recognition," Data Mining and Knowledge Discovery, vol. 2, pp. 121-167, 1998.
[14] A. J. Smola and B. Sch¨olkopf, "A tutorial on support vector regression," Statistics and Computing, vol. 14, no. 3, pp. 199-222, 2004.
[15] B. E. Boser, I. M. Guyon, and V. Vapnik, "A training algorithm for optimal margin classifiers," in Proceedings of the 5th Annual ACM Workshop on Computational Learning Theory, D. Haussler, Ed. ACM Press, 1992, pp. 144-152.
[16] B. Sch¨olkopf, "The kernel trick for distances," Neural Information Process. Systems (NIPS), vol. 13, 2000.
[17] D. Anguita and G. Bozza, "The effect of quantization on support vector machines with gaussian kernel," in Proceedings of International Joint Conference on Neural Networks, Montreal, Canada, 2005, pp. 681-684.
[18] X.-Y. Zhang and Y.-C. Liu, "Performance analysis of support vector machines with gauss kernel," Computer Engineering, vol. 29, no. 8, pp. 22-25, 2003.
[19] Y. Tan and J. Wang, "A support vector machine with a hybrid kernel and minimal vapnik-chervonenkis dimension," IEEE Transactions on Knowledge and Data Engineering, vol. 16, pp. 385-395, 2004.
[20] J.-X. Liu, J. Li, and Y.-J. Tan, "An empirical assessment on the robustness of support vector regression with different kernels," in Proceedings of the 4th International Conference on Machine Learning and Cybernetics, vol. 7, Guangzhou, China, 2005.
[21] R. Opfer, "Multiscale kernels," Advances in Computational Mathematics, vol. 25, pp. 357-380, 2006.
[22] L. Zhang, W.-D. Zhou, and L.-C. Jiao, "Wavelet support vector machine," IEEE Transactions on Systems, Man and Cybernetics - Part B: Cybernetics, vol. 34, pp. 34-39, 2004.
[23] X.-G. Zhang, D. Gao, X.-G. Zhang, and S.-J. Ren, "Robust wavelat support machines for regression estimation," International Journal Information Technology, vol. 11, no. 9, pp. 35-46, 2005.
[24] A. J. Smola, B. Sch¨olkopf, and K.-R. M¨uller, "The connection between regularization operators and support vector kernels," Neural Networks, vol. 11, pp. 637-649, 1998.
[25] R. Schaback and H. Wendland, "Approximation by positive definite kernels," in Advanced Problems in Constructive Approximation, M. D. Buhmann and D. H. Mache, Eds. Birkh¨auser, Basel: Verlag, 2002, pp. 203-221.
[26] G. Wahba, "Support vector machines, reproducing kernel hilbert spaces and randomized gacv," in Advances in Kernel Methods-Support Vector Learning, B. Sch¨olkopf, C. J. Burges, and A. J. Smola, Eds. Cambridge, England: MIT Press, 1999, pp. 69-88.
[27] L.-M. Ma and Z.-M. Wu, "Kernel based approximation in sobolev spaces with radial basis functions," Applied Mathematics and Computation, vol. 215, p. 2229C2237, 2009.
[28] N. Aronszajn, "Theory of reproducing kernels," Transactions of the American Mathematical Society, vol. 68, no. 3, pp. 337-404, 1950.
[29] J. Gao, C. J. Harris, and S. R. Gunn, "Support vector kernel based on frames in function hilbert spaces," Neural Computation, vol. 13, pp. 1975-1994, 2001.
[30] R. Schaback, "A unified theory of radial basis functions native hilbert spaces for radial basis functions ii," Journal of Computational and Applied Mathematics, vol. 121, pp. 165-177, 2000.
[31] S. Bergman, "The approximation of functions satisfying a linear partial differential equation," Duke Mathematics Journal, vol. 6, pp. 537-561, 1940.
[32] M.-G. Cui and Z.-X. Deng, "On the best operator of interpolation," Math. Numerica Sinica, vol. 8, no. 2, pp. 209-216, 1986.
[33] J. Ling and Y.-S. Li, "A new method for computing reproducing kernels," Northeast Math. J., vol. 14, no. 4, pp. 467-473, 1998.
[34] B. Sch¨olkopf, A. J. Smola, and K.-R. M¨uller, "Nonlinear component analysis as a kernel eigenvalue problem," Neural Computation, vol. 10, no. 5, pp. 1299-1319, 1998.
[35] S. Mika, G. Ratsch, B. Weston, B. Sch¨olkopf, and K.-R. M¨uller, "Fisher discriminate analysis with kernels," in Neural Networks for Signal Processing IX, Y. H. Hu, J. Larsen, E. Wilson, and S. Douglas, Eds. IEEE Press, 1999, pp. 41-48.
[36] D. MacDonald and C. Fyfe, "The kernel self-organizing map," in Proceedings of 4th International Conference on Knowledge-based Intelligent Engineering Systems and Allied Technologies, KES 2000, R. J. Howlett and L. C. Jain, Eds., vol. 1, 2000, pp. 317-320.
[37] A. J. Smola, B. Sch¨olkopf, and K.-R. M¨uller, "General cost functions for support vector regression," in Proceedings of Ninth Australian Conf. on Neural Networks, 1998, pp. 79-83.
[38] S. Bochner, Lectures on Fourier Integral. Princeton, New Jersey: Princeton University Press, 1959.
[39] A. J. Smola, Z. L. O' va'ri, and R. C. Williamson, "Regularization with dot-product kernels," in Advances in Neural Information Processing Systems, T. K. Leen, T. G. Dietterich, and V. Tresp, Eds., vol. 13. MIT Press, 2001, pp. 308-314.
[40] A. Berlinet and C. Thomas-Agnan, Reproducing Kernel Hilbert Spaces in Probability and Statistics. Boston, Dordrecht, London: Kluwer Academic Publishers Group, 2003.
[41] N. Cristianini and J. Shawe-Taylor, An Introduction to Support Vector Machines and Other Kernel-based Learning Methods. Cambridge, U.K: Cambridge University Press, 2000.
[42] M.-G. Cui and Y.-Z. Lin, Nonlinear Numerical Analysis in Reproducing Kernel Space. Commack, NY: Nova Science Publishers, Inc., 2009.
[43] M.-G. Cui, M. Zhang, and Z.-X. Deng, "Two-dimensional reproducing kernel and surface interpolation," Journal Computational Mathematic, vol. 4, no. 2, pp. 177-181, 1986.
[44] W. Zhang, "The construction of reproducing kernel and some approximating problems in the reproducing kernel spaces," Ph.D. dissertation, National University of Defense Technology, Changsha, Hunan, China, 2005.
[45] X.-J. Zhang and H. Long, "Computing reproducing kernels for wm 2 (a, b) (i)," Mathematic Numerica Sinica, vol. 30, no. 3, pp. 295-304, 2008.
[46] Y.-S. Li, "On the recurrence relations for b-splines defined by certain l-splines," Journal of Approximation theory, vol. 43, pp. 359-369, 1985.
[47] V. E. Neagoe, "Inversion of the van der monde matrix," IEEE Signal Processing Letters, vol. 3, no. 4, pp. 119-120, 1996.