Using a Fast Elitist Non-Dominated Genetic Algorithm on Multi-Objective Programming for Quarterly Disaggregation of the Gross Domestic Product

Raïmi Aboudou Essessinou, G. Degla
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引用次数: 1

Abstract

Abstract This research paper we use a fast elitist multiobjective genetic algorithm to solve the new approach that we propose to quarterly disaggregating of the Gross Domestic Product (GDP) by multiobjective programming. Thus, the quarterly disaggregation of the GDP is described as a quadratic multiobjective programming problem that generalizes Denton’s proportional method. The proposed approach has the advantage reduce to one the number of optimization programs to be solved. Our proposed method can be applied to the national accounts of any country that has adopted the National Accounting System. The simulation results are compared to those obtained using Denton’s proportional method and these results revealed the overall performance of the multiobjective programming approach for the quarterly disaggregation of GDP. Our approach is more suitable for taking into account the links between branches of national accounts, in terms of volumes and prices of products demanded during the production process. Also, it reduces forecast error and volatility of quarterly GDP. Besides, it is worth noting that our method is a usfull step for data processing such as chain-linked measures, overlap growth techniques, seasonal adjustment and calendar effects adjustment, in time series and econometrics analysis.
基于快速精英非支配遗传算法的国内生产总值季度分解多目标规划
摘要本文采用快速精英多目标遗传算法求解国内生产总值(GDP)季度分类的多目标规划新方法。因此,GDP的季度分解被描述为一个二次多目标规划问题,它推广了Denton的比例方法。该方法的优点是将需要求解的优化方案减少到一个。我们提出的方法可以适用于任何采用国民核算制度的国家的国民核算。将仿真结果与Denton比例法的结果进行了比较,结果揭示了多目标规划方法对GDP季度分解的总体性能。就生产过程中所需产品的数量和价格而言,我们的方法更适合考虑国民核算各部门之间的联系。同时降低了季度GDP的预测误差和波动性。此外,值得注意的是,我们的方法在时间序列和计量经济学分析中,对于连锁测度、重叠增长技术、季节调整和日历效应调整等数据处理是一个有用的步骤。
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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