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COMBINED PREDICTION OF IMPROVED MULTIDIMENSIONAL GRAY MODEL AND SUPPORT VECTOR MACHINE

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Volume 1, Issue 1, pp 1-7

Author(s)

Harriet Kim, Haijun Bai*, Zandong Sun

Affiliation(s)

China University of Petroleum, Dongying 257061, Shandong, China.

Corresponding Author

Haijun Bai

ABSTRACT

Support vector machine improves the generalization ability through the principle of structural risk minimization. Now it is mostly used to solve the classification and regression problems of small samples, but when it is used for prediction, a single model has certain limitations. This paper proposes a prediction model that combines the improved multidimensional gray model and support vector machine to realize the complementary advantages of different models, avoid the limitations of a single model, and increase the stability of the model. Experimental simulation results show that the forecasting effect of the proposed combined forecasting model is significantly better than that of support vector machine and the model based on innovation priority accumulation method, and the forecasting accuracy is higher than that of the single forecasting model.

KEYWORDS

Forecasting model; Multidimensional gray model; Combination of support vector machines; Forecasting model.

CITE THIS PAPER

Harriet Kim, Haijun Bai, Zandong Sun. Combined prediction of improved multidimensional gray model and support vector machine. World Journal of Mathematics and Physics. 2023, 1(1): 1-7.

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