학술논문

Research on Time Series Problem Model Based on Dynamic Network NAR and Multiple Regression
Document Type
Conference
Source
2020 International Conference on Artificial Intelligence and Computer Engineering (ICAICE) ICAICE Artificial Intelligence and Computer Engineering (ICAICE), 2020 International Conference on. :416-419 Oct, 2020
Subject
Computing and Processing
Analytical models
Correlation
Economic indicators
Linear regression
Time series analysis
Market research
Mathematical model
NAR dynamic neural network
time series
machine learning
economic vitality prediction
memory and feedback
Language
Abstract
With the escalation of the trade war between China and the United States and the outbreak of the new coronavirus epidemic in early 2020, China’s economy has been seriously affected. Accurate prediction of future economic development is a necessary means to formulate economic development strategies. For this reason, taking Guangdong province, the province with the strongest economic vitality, as an example, this paper uses multiple regression method to calculate the correlation degree and influence weight of population number, number of enterprises and per capita disposable income with economic development, and obtains multiple regression linear equation. In addition, this paper also uses the NAR dynamic neural network model in machine learning algorithms to predict the future trends of the three factors and economic aggregates, and analyzes the feedback results of network training errors, autocorrelation values, and partial correlation values. Compared with the multiple regression method, it is found that the final results of the two are very similar, with small errors and high correlation.