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ANALYSIS AND DECISION-MAKING OF REGIONAL ECONOMIC VITALITY AND ITS INFLUENCING FACTORS

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Volume 2, Issue 4, Pp 90-101, 2024

DOI: 10.61784/tsshr3016

Author(s)

ShaSha Zhang

Affiliation(s)

School of Mathematics and Statistics, Guangxi Normal University, Guilin 541006, Guangxi, China.

Corresponding Author

ShaSha Zhang

ABSTRACT

This paper takes Henan Province as the research object, selects GDP as the index of regional economic vitality, and selects the index that affects GDP from the aspects of economic benefit, opening up, population, government regulation, residents' quality of life and enterprise vitality. Firstly, a multiple linear regression model is established to test the multicollinearity of the independent variables. Then, the ridge regression and LASSO regression models are established to correct them, and the multicollinearity problem between independent variables is solved. By comparing and analyzing the two models, the LASSO regression model is the optimal regression model. Secondly, the Holt exponential smoothing model is used to predict the time series of the five variables showing a linear trend in the LASSO regression equation. The simple exponential smoothing model is used to predict the four variables of random fluctuation, and the data of each variable in 2024 are predicted. The predicted value of GDP in Henan Province in 2024 is 61441.55 billion yuan. Finally, some suggestions are put forward for Henan Province from several aspects, so that the economic development of the region can form a virtuous circle, so as to enhance the competitiveness of its regional economy and promote the sustainable development of the economy.

KEYWORDS

Multivariate linear regression model; Ridge regression model; LASSO regression model; Time series prediction; Regional economic vitality

CITE THIS PAPER

ShaSha Zhang. Analysis and decision-making of regional economic vitality and its influencing factors. Trends in Social Sciences and Humanities Research. 2024, 2(4): 90-101. DOI: 10.61784/tsshr3016.

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