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Modelling of Sudan’s Economy Composition using Machine Leaming Approaches

机译:使用机器学习方法对苏丹经济构成进行建模

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Modelling of economy systems is critical as it provides means of addressing and future forecasting of economic outcomes, hence accurate models should be developed. The purpose of this research is to show the effectiveness of Machine Learning approaches in modelling of economy systems. The economy of Sudan is used to reflect this objective, taking the Gross Domestic Product (GDP) as a monetary measure of economy. It was found that Agriculture, Industry and Service are the main contributors of Sudan's GDP in accordance to the GDP data of Sudan from 1960 to 2016. In this research, Regression and Support Vector Machine algorithms were used to develop two different models of Sudan's economy. Both models have produced satisfying results in predicting, however the SVM model has out-performed the Polynomial Regression model.
机译:经济系统的建模至关重要,因为它提供了解决经济结果和未来经济预测的方法,因此应开发准确的模型。这项研究的目的是证明机器学习方法在经济系统建模中的有效性。苏丹的经济用于反映这一目标,将国内生产总值(GDP)作为衡量经济的货币指标。根据1960年至2016年苏丹的GDP数据,发现农业,工业和服务业是苏丹GDP的主要贡献者。在这项研究中,使用回归和支持向量机算法开发了两种不同的苏丹经济模型。两种模型的预测结果均令人满意,但是SVM模型的性能优于多项式回归模型。

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