Analysis and Forecast of Resource-based City GDP Based on ARIMA Model

Hao Huang
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Abstract

As an important indicator to measure a country or region, GDP is often used to measure the level of economic development of a country or region. Doing a good GDP forecast is beneficial to the real-time and adjustment of government policies, and has important theoretical and guiding significance. This paper selects the GDP data of Dongying City from 1978 to 2016 as a research sample, and predicts the GDP of Dongying City from 2017 to 2020 by constructing a time series ARIMA model. The research results show that Dongying City's GDP has a first-order single-integration nature, and the current GDP will be affected by the interference of the last four periods of GDP and the last three disturbances. Due to the influence of uncertain factors such as the international situation, economic foundation and scientific and technological progress, the accuracy of model prediction decreases, and the actual GDP is underestimated. However, the future trend of the time series can be roughly judged according to the prediction of the ARIMA model, preparations can be made in advance to ensure the smooth development of the city's economy, and provide decision-making reference for resource-based city governments, relevant institutional policy formulation, and strategic adjustment.
基于ARIMA模型的资源型城市GDP分析与预测
GDP作为衡量一个国家或地区的重要指标,经常被用来衡量一个国家或地区的经济发展水平。做好GDP预测,有利于政府政策的实时和调整,具有重要的理论和指导意义。本文选取东营市1978 - 2016年的GDP数据作为研究样本,通过构建时间序列ARIMA模型对东营市2017 - 2020年的GDP进行预测。研究结果表明,东营市GDP具有一阶单积分性质,当前GDP会受到前四期GDP和后三期GDP干扰的影响。由于国际形势、经济基础、科技进步等不确定因素的影响,模型预测的准确性降低,实际GDP被低估。但根据ARIMA模型的预测,可以大致判断时间序列的未来趋势,提前做好准备,保证城市经济的顺利发展,为资源型城市政府、相关制度政策制定、战略调整提供决策参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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