{"title":"Economic Crisis Treatment Based on Artificial Intelligence","authors":"Mohamed F. Abd El-Aal","doi":"10.22452/ijie.vol16no3.5","DOIUrl":null,"url":null,"abstract":"Abstract: There are many possible causes of an economic crisis—a financial downturn, a banking meltdown, political strife (e.g., the Russia-Ukraine war), or a health-related catastrophe (e.g., Covid-19). Some of these crises are expected, while others are “bolts from the sky.” However, what is certain is that all these crises, whatever their cause, have a negative impact on global gross domestic product (GDP). If we can identify the components of output that have the most impact in an economic crisis, we might be able to mitigate its effects. Therefore, this paper uses machine learning algorithms to determine how the components of expenditure and sectoral value-added approach impact global GDP. The gradient boosting algorithm is the most accurate model for predicting and determining the impact of independent variables on a dependent variable. The results indicate that government spending has the largest effect on global GDP, accounting for 68.3% of the impact. The economic sector with the most impact on global GDP is the service sector, which affects global output by 42.3%, followed by the agricultural sector at 30.2%. Thus, stimulating government spending and the service sector may reduce the negative effects of an economic crisis.","PeriodicalId":393532,"journal":{"name":"Jurnal Institutions and Economies","volume":"405 3","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-07-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Jurnal Institutions and Economies","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.22452/ijie.vol16no3.5","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Abstract: There are many possible causes of an economic crisis—a financial downturn, a banking meltdown, political strife (e.g., the Russia-Ukraine war), or a health-related catastrophe (e.g., Covid-19). Some of these crises are expected, while others are “bolts from the sky.” However, what is certain is that all these crises, whatever their cause, have a negative impact on global gross domestic product (GDP). If we can identify the components of output that have the most impact in an economic crisis, we might be able to mitigate its effects. Therefore, this paper uses machine learning algorithms to determine how the components of expenditure and sectoral value-added approach impact global GDP. The gradient boosting algorithm is the most accurate model for predicting and determining the impact of independent variables on a dependent variable. The results indicate that government spending has the largest effect on global GDP, accounting for 68.3% of the impact. The economic sector with the most impact on global GDP is the service sector, which affects global output by 42.3%, followed by the agricultural sector at 30.2%. Thus, stimulating government spending and the service sector may reduce the negative effects of an economic crisis.
摘要:导致经济危机的可能原因有很多--金融衰退、银行业崩溃、政治纷争(如俄乌战争)或与健康有关的灾难(如 Covid-19)。这些危机有些是预料之中的,有些则是 "晴天霹雳"。然而,可以肯定的是,所有这些危机,无论其起因如何,都会对全球国内生产总值(GDP)产生负面影响。如果我们能找出在经济危机中影响最大的产出组成部分,或许就能减轻危机的影响。因此,本文使用机器学习算法来确定支出和部门附加值方法的组成部分如何影响全球国内生产总值。梯度提升算法是预测和确定自变量对因变量影响的最准确模型。结果表明,政府支出对全球 GDP 的影响最大,占 68.3%。对全球 GDP 影响最大的经济部门是服务业,对全球产出的影响占 42.3%,其次是农业部门,占 30.2%。因此,刺激政府支出和服务业可以减少经济危机的负面影响。