基于残差自回归模型的中国居民消费预测分析

Shuchao Wang
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引用次数: 0

摘要

通过对不同方法的比较,选择残差自回归模型,提高居民消费预测的准确性。该模型结合确定性分析方法和自回归建模方法,分别提取确定性信息和随机信息,提高了预测精度。本文介绍了残差自回归模型的建模过程,并对中国居民消费水平数据进行实证分析,以评价模型的拟合精度。最后,利用该模型对2021-2023年中国居民消费水平进行预测,结果表明,假设外部环境不发生重大变化,未来三年中国居民消费平均增长率约为7%。本文有助于理解残差自回归模型及其在居民消费预测领域的应用,为政策制定者和研究人员提供有价值的见解。
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The Forecast Analysis of Chinese Resident Consumption Based on the Residual Autoregressive Model
This paper aims to improve the accuracy of resident consumption forecast by comparing different methods and selecting the residual autoregressive model. The model combines deterministic analysis method and autoregressive modeling to extract deterministic and random information, respectively, and improve the prediction accuracy. The paper introduces the modeling process of the residual autoregressive model and conducts empirical analysis on the consumption level data of Chinese residents to evaluate the fitting accuracy of the model. Finally, the model is used to forecast the consumption level of Chinese residents in 2021-2023, and the results indicate an average growth rate of about 7% over the next three years, assuming no major changes in the external environment. This paper contributes to the understanding of the residual autoregressive model and its application in the field of resident consumption forecasting, providing valuable insights for policymakers and researchers in this area.
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来源期刊
CiteScore
1.40
自引率
14.30%
发文量
3
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