DocumentCode
2649718
Title
Notice of Retraction
Application of least squares support vector regression in network flow forecasting
Author
Guo Hebin ; Guan Xiaoqing
Author_Institution
Northern Beijing Vocational Educ. Inst., Beijing, China
Volume
7
fYear
2010
fDate
16-18 April 2010
Abstract
Notice of Retraction
After careful and considered review of the content of this paper by a duly constituted expert committee, this paper has been found to be in violation of IEEE´s Publication Principles.
We hereby retract the content of this paper. Reasonable effort should be made to remove all past references to this paper.
The presenting author of this paper has the option to appeal this decision by contacting TPII@ieee.org.
Accurate forecasting of network flow can control network congestion effectively and improve network performance. Least squares support vector regression is competent method to solve the non-linear problem and solve the problems of over-fitting and local minimum. Least squares support vector regression is adopted to predict network flow in the paper. Network flow data with 70 data points are adopted to research the forecasting ability of the proposed method in the paper compared with other methods. The mean relative error of LS-SVR is 1.45, and the mean relative error of BP neural network is 2.54. It is indicated that the LS-SVR forecasting model is better than BP neural network.
After careful and considered review of the content of this paper by a duly constituted expert committee, this paper has been found to be in violation of IEEE´s Publication Principles.
We hereby retract the content of this paper. Reasonable effort should be made to remove all past references to this paper.
The presenting author of this paper has the option to appeal this decision by contacting TPII@ieee.org.
Accurate forecasting of network flow can control network congestion effectively and improve network performance. Least squares support vector regression is competent method to solve the non-linear problem and solve the problems of over-fitting and local minimum. Least squares support vector regression is adopted to predict network flow in the paper. Network flow data with 70 data points are adopted to research the forecasting ability of the proposed method in the paper compared with other methods. The mean relative error of LS-SVR is 1.45, and the mean relative error of BP neural network is 2.54. It is indicated that the LS-SVR forecasting model is better than BP neural network.
Keywords
backpropagation; least squares approximations; neural nets; regression analysis; support vector machines; telecommunication congestion control; BP neural network; least squares support vector regression; network congestion control; network flow forecasting; nonlinear problem; overfitting; Educational institutions; Kernel; Lagrangian functions; Least squares methods; Neural networks; Predictive models; LS-SVR; forecasting model; mean relative error; network flow;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Engineering and Technology (ICCET), 2010 2nd International Conference on
Conference_Location
Chengdu
Print_ISBN
978-1-4244-6347-3
Type
conf
DOI
10.1109/ICCET.2010.5485452
Filename
5485452
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