Regression Approach for GDP Prediction Using Multiple Features From Macro-Economic Data

Angelin Gladston, I. ArjunSharmaa, G. BagirathanS.S.K.
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Abstract

Gross domestic product is the main measure used predominantly for assessing the wealth and growth of a country. Previous works used the amount of CO2 emitted by a country in predicting the gross domestic product growth of that quarter. Though it is a valid indicator, there are many other features that can be considered while calculating the gross domestic product of a country. In this paper, an approach to predict gross domestic product utilizing many features is introduced. Macroeconomic data like unemployment rate, gold rate, foreign exchange rate, and other important data to plot the graph are used for linear regression, employing dimensionality reduction to analyze and extract only the important features and thereby increasing the effectiveness of the proposed GDP prediction. Since data has been published in different time intervals, preprocessing like interpolation, reshaping, and dimensionality reduction using PCA are carried out to make the proposed GDP prediction model more precise and accurate, and the maximum accuracy of 95% is obtained.
基于宏观经济数据多特征的GDP预测回归方法
国内生产总值(gdp)是衡量一个国家财富和经济增长的主要指标。以前的研究使用一个国家的二氧化碳排放量来预测该季度的国内生产总值(gdp)增长。虽然这是一个有效的指标,但在计算一个国家的国内生产总值时,还有许多其他特征可以考虑。本文介绍了一种利用多特征预测国内生产总值的方法。采用失业率、金价、汇率等宏观经济数据,以及其他绘制图表的重要数据进行线性回归,采用降维方法,只分析提取重要特征,从而提高了本文提出的GDP预测的有效性。由于数据发布的时间间隔不同,为了使本文提出的GDP预测模型更加精确和准确,我们对模型进行了插值、整形、PCA降维等预处理,达到了95%的最高准确率。
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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