Fast Forecasting with Simplified Kernel Regression Machines

Kernel machines, including support vector machines, regularized networks and Gaussian process etc, have been widely used in forecasting. However, standard algorithms are often time consuming. To this end, we propose a new method for imposing the sparsity of kernel regression ma- chines. Different to previous methods, it incrementally finds a set of basis functions that minimizes the primal cost func- tions directly. The main advantage of out method lies in its ability to form very good approximations for kernel re- gression machines with a clear control on the computation complexity as well as the training time. Experiments on two real time series and benchmark Sunspot assess the feasibil- ity of our method.

[1]  Elisa Bertino,et al.  Temporal hierarchies and inheritance semantics for GTRBAC , 2002, SACMAT '02.

[2]  Ju-Jang Lee,et al.  Heterogeneous local model networks for time series prediction , 2005, Appl. Math. Comput..

[3]  Tom Downs,et al.  Exact Simplification of Support Vector Solutions , 2002, J. Mach. Learn. Res..

[4]  Doo-Kwon Baik,et al.  Symmetric RBAC model that takes the separation of duty and role hierarchies into consideration , 2004, Comput. Secur..

[5]  Olivier Chapelle,et al.  Training a Support Vector Machine in the Primal , 2007, Neural Computation.

[6]  Pierangela Samarati,et al.  Providing Security and Interoperation of Heterogeneous Systems , 2004, Distributed and Parallel Databases.

[7]  Gail-Joon Ahn,et al.  Role-based authorization constraints specification , 2000, TSEC.

[8]  Mark Strembeck,et al.  An integrated approach to engineer and enforce context constraints in RBAC environments , 2004, TSEC.

[9]  M. Seeger Low Rank Updates for the Cholesky Decomposition , 2004 .

[10]  Emil C. Lupu,et al.  Conflicts in Policy-Based Distributed Systems Management , 1999, IEEE Trans. Software Eng..

[11]  Zhizhong Wang,et al.  Model optimizing and feature selecting for support vector regression in time series forecasting , 2008, Neurocomputing.

[12]  Li Gong,et al.  Computational Issues in Secure Interoperation , 1996, IEEE Trans. Software Eng..

[13]  Wei Chu,et al.  A Unified Loss Function in Bayesian Framework for Support Vector Regression , 2001, ICML.

[14]  Zhizhong Wang,et al.  Optimized Local Kernel Machines for Fast Time Series Forecasting , 2007, Third International Conference on Natural Computation (ICNC 2007).

[15]  Hong Chen,et al.  Constraint generation for separation of duty , 2006, SACMAT '06.

[16]  Michael T. Heath,et al.  Scientific Computing: An Introductory Survey , 1996 .

[17]  Ravi S. Sandhu,et al.  Role-Based Access Control Models , 1996, Computer.

[18]  Elisa Bertino,et al.  A generalized temporal role-based access control model , 2005, IEEE Transactions on Knowledge and Data Engineering.

[19]  Ninghui Li,et al.  On mutually-exclusive roles and separation of duty , 2004, CCS '04.

[20]  Elisa Bertino,et al.  TRBAC , 2001, ACM Trans. Inf. Syst. Secur..