Abstract
In the implementation of a neural network, some imperfect issues, such as precision error and thermal noise, always exist. They can be modeled as multiplicative noise. This paper studies the problem of training RBF network and selecting centers under multiplicative noise. We devise a noise resistant training algorithm based on the alternating direction method of multipliers (ADMM) framework and the minimax concave penalty (MCP) function. Our algorithm first uses all training samples to create the RBF nodes. Afterwards, we derive the training objective function that can tolerate to the existence of noise. Finally, we add a MCP term to the objective function. We then apply the ADMM framework to minimize the modified objective function. During training, the MCP term has an ability to make some unimportant RBF weights to zero. Hence training and RBF node selection can be done at the same time. The proposed algorithm is called the ADMM-MCP algorithm. Also, we present the convergent properties of the ADMM-MCP algorithm. From the simulation result, the ADMM-MCP algorithm is better than many other RBF training algorithms under weight/node noise situation.
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References
Poggio, T., Girosi, T.: Networks for approximation and learning. Proc. IEEE 78(9), 1481–1497 (1990)
Haykin, S.: Neural Networks: A Comprehensive Foundation. Prentice Hall, Upper Saddle River (1998)
Gomm, J., Yu, D.: Selecting radial basis function network centers with recursive orthogonal least squares training. IEEE Trans. Neural Netw. 11(2), 306–314 (2000)
Burr, J.B.: Digital neural network implementations. In: Neural Networks, Concepts, Applications, and Implementations, vol. 3, pp. 237–285. Prentice Hall (1995)
Han, Z., Feng, R., Wan, W.Y., Leung, C.S.: Online training and its convergence for faulty networks with multiplicative weight noise. Neurocomputing 155, 53–61 (2015)
Bernier, J.L., Ortega, J., Ros, E., Rojas, I., Prieto, A.: A quantitative study of fault tolerance, noise immunity, and generalization ability of MLPs. Neural Comput. 12(12), 2941–2964 (2000)
Leung, C.S., Wan, W.Y., Feng, R.: A regularizer approach for RBF networks under the concurrent weight failure situation. IEEE Trans. Neural Netw. Learn. Syst. 28(6), 1360–1372 (2017)
Zhang, C.H.: Nearly unbiased variable selection under minimax concave penalty. Ann. Stat. 38(2), 894–942 (2010)
Boyd, S., Parikh, N., Chu, E., Peleato, B., Eckstein, J.: Distributed optimization and statistical learning via the alternating direction method of multipliers. Found. Trends Mach. Learn. 3(1), 1–122 (2011)
Breheny, P., Huang, J.: Coordinate descent algorithms for nonconvex penalized regression, with applications to biological feature selection. Ann. Appl. Stat. 5(1), 232–253 (2011)
Donoho, D.L., Johnstone, I.M.: Ideal spatial adaptation by wavelet shrinkage. Biometrika 81(3), 425–455 (1994)
Attouch, H., Bolte, J., Svaiter, B.F.: Convergence of descent methods for semi-algebraic and tame problems: proximal algorithms, forward-backward splitting, and regularized gauss-seidel methods. Math. Program. 137(1–2), 91–129 (2013)
Wang, Y., Yin, W., Zeng, J.: Global convergence of ADMM in nonconvex nonsmooth optimization. J. Sci. Comput. (2015, accepted)
Lichman, M.: UCI machine learning repository (2013)
Zhang, Q., Hu, X., Zhang, B.: Comparison of \(l_1\)-norm SVR and sparse coding algorithms for linear regression. IEEE Trans. Neural Netw. Learn. Syst. 26(8), 1828–1833 (2015)
Malioutov, D.M., Cetin, M., Willsky, A.S.: Homotopy continuation for sparse signal representation. In: Proceedings of the IEEE CASSP 2005, vol. 5, pp. 733–736. IEEE Press, New York (2005)
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The work was supported by a research grant from City University of Hong Kong (7004842).
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Wang, H., Leung, A.C.S., Sum, J. (2018). MCP Based Noise Resistant Algorithm for Training RBF Networks and Selecting Centers. In: Cheng, L., Leung, A., Ozawa, S. (eds) Neural Information Processing. ICONIP 2018. Lecture Notes in Computer Science(), vol 11302. Springer, Cham. https://doi.org/10.1007/978-3-030-04179-3_59
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DOI: https://doi.org/10.1007/978-3-030-04179-3_59
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