Analysis and Forecast of GDP in Shaoguan City Based on ARIMA Model

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Abstract

: GDP is a measure of a region's economic development, industrial structure, economic vitality, etc. It is of great significance to analyze the development of a region's GDP and predict its future development trend. The ARIMA model is an important model in time series analysis and forecast. In this paper, the GDP data of Shaoguan City from 1978 to 2019 are selected for empirical analysis using SPSS 25.0 software. After the smoothing test and processing the original data, the ARIMA (0, 2, 0) model is established through steps such as determining model parameters and model testing. Then, a comparison is made between the real GDP data and the data predicted by the ARIMA model from 2020 to 2022. It is found that the relative error values between the model prediction results and the real data are small, which indicates that the model fits well. Finally, the GDP data of Shaoguan City in the next three years are predicted to provide certain references and suggestions for relevant departments to plan for the future urban economic development of Shaoguan.
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基于ARIMA模型的韶关市GDP分析与预测
GDP是衡量一个地区经济发展、产业结构、经济活力等的指标。分析一个地区GDP的发展,预测其未来的发展趋势,具有重要的意义。ARIMA模型是时间序列分析和预测中的一种重要模型。本文选取韶关市1978 - 2019年的GDP数据,运用SPSS 25.0软件进行实证分析。经过平滑检验和原始数据处理后,通过确定模型参数和模型检验等步骤,建立ARIMA(0,2,0)模型。然后,将2020 - 2022年的实际GDP数据与ARIMA模型预测的数据进行了比较。模型预测结果与实际数据的相对误差值较小,表明模型拟合良好。最后对韶关未来三年的GDP数据进行预测,为有关部门规划韶关未来城市经济发展提供一定的参考和建议。
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