Predicting firms’ resilience to economic crisis using artificial intelligence for optimizing economic stimulus programs

IF 2.4 Q2 INFORMATION SCIENCE & LIBRARY SCIENCE
Niki Kyriakou, Euripidis N. Loukis, Manolis Maragoudakis
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引用次数: 0

Abstract

Purpose This study aims to develop a methodology for predicting the resilience of individual firms to economic crisis, using historical government data to optimize one of the most important and costly interventions that governments undertake, the huge economic stimulus programs that governments implement for mitigating the consequences of economic crises, by making them more focused on the less resilient and more vulnerable firms to the crisis, which have the highest need for government assistance and support. Design/methodology/approach The authors are leveraging existing firm-level data for economic crisis periods from government agencies having competencies/responsibilities in the domain of economy, such as Ministries of Finance and Statistical Authorities, to construct prediction models of the resilience of individual firms to the economic crisis based on firms’ characteristics (such as human resources, technology, strategies, processes and structure), using artificial intelligence (AI) techniques from the area of machine learning (ML). Findings The methodology has been applied using data from the Greek Ministry of Finance and Statistical Authority about 363 firms for the Greek economic crisis period 2009–2014 and has provided a satisfactory prediction of a measure of the resilience of individual firms to an economic crisis. Research limitations/implications The authors’ study opens up new research directions concerning the exploitation of AI/ML in government for a critical government activity/intervention of high importance that mobilizes/spends huge financial resources. The main limitation is that the abovementioned first application of the proposed methodology has been based on a rather small data set from a single national context (Greece), so it is necessary to proceed to further application of this methodology using larger data sets and different national contexts. Practical implications The proposed methodology enables government agencies responsible for the implementation of such economic stimulus programs to proceed to radical transformations of them by predicting the resilience to economic crisis of the firms applying for government assistance and then directing/focusing the scarce available financial resources to/on the ones predicted to be more vulnerable, increasing substantially the effectiveness of these programs and the economic/social value they generate. Originality/value To the best of the authors’ knowledge, this study is the first application of AI/ML in government that leverages existing data for economic crisis periods to optimize and increase the effectiveness of the largest and most important and costly economic intervention that governments repeatedly have to make: the economic stimulus programs for mitigating the consequences of economic crises.
利用人工智能优化经济刺激计划,预测企业对经济危机的应变能力
本研究旨在开发一种预测单个企业对经济危机的弹性的方法,使用历史政府数据来优化政府采取的最重要和最昂贵的干预措施之一,政府实施的巨大的经济刺激计划,以减轻经济危机的后果,使他们更加关注危机中弹性较弱和更脆弱的企业。他们最需要政府的帮助和支持。设计/方法/方法作者利用现有的经济危机时期企业层面的数据,这些数据来自具有经济领域能力/责任的政府机构,如财政部和统计部门,根据企业的特征(如人力资源、技术、战略、流程和结构)构建个体企业对经济危机的弹性预测模型。使用机器学习领域的人工智能(AI)技术。该方法使用了希腊财政部和统计局在2009-2014年希腊经济危机期间约363家公司的数据,并提供了对个别公司对经济危机的弹性措施的令人满意的预测。作者的研究开辟了新的研究方向,涉及在政府中利用AI/ML进行高度重要的政府活动/干预,调动/花费大量财政资源。主要的限制是,上述提出的方法的首次应用是基于来自单一国家背景(希腊)的相当小的数据集,因此有必要使用更大的数据集和不同的国家背景进一步应用该方法。所提出的方法使负责实施此类经济刺激计划的政府机构能够通过预测申请政府援助的公司对经济危机的恢复能力,然后将稀缺的可用财政资源定向/集中到预计更脆弱的公司,从而对这些计划进行根本性的转变。大幅提高这些项目的有效性及其产生的经济/社会价值。据作者所知,这项研究是AI/ML在政府中的首次应用,它利用经济危机时期的现有数据来优化和提高政府必须反复做出的最大、最重要和最昂贵的经济干预措施的有效性:减轻经济危机后果的经济刺激计划。
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来源期刊
Transforming Government- People Process and Policy
Transforming Government- People Process and Policy INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
6.70
自引率
11.50%
发文量
44
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