Mathematical Theory and Applications ›› 2018, Vol. 38 ›› Issue (3-4): 101-110.
Previous Articles Next Articles
Online:
Published:
Abstract: Support vector machine improves the generalization ability through the principle of structural risk minimization.It is mostly used to solve the classification problem and regression problem of small samples.However,when used for prediction,a single model has certain limitations.In this paper,an improved multi-dimensional gray model and a support vector machine combined forecasting model are proposed.The combined forecasting model realizes the complementary advantages of different models,and can avoid the limitations of the single model,increase the stability of the model.The experimental simulation results show that the proposed combined forecast.The prediction effect of the model is significantly better than the support vector machine and the innovation-based prioritization method,the prediction accuracy of the combined prediction model is higher than that of the single prediction model.
Key words: Forecasting model, Multidimensional grey model, Support vector machine, The combined forecasting model
Liang Zhixun, Yuan Quan, Zeng Xiangyan. Combined Forecasting of Improved Multidimensional Grey Model and Support Vector Machine[J]. Mathematical Theory and Applications, 2018, 38(3-4): 101-110.
0 / / Recommend
Add to citation manager EndNote|Ris|BibTeX
URL: https://mta.csu.edu.cn/EN/
https://mta.csu.edu.cn/EN/Y2018/V38/I3-4/101