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

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 impl...

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Veröffentlicht in:Transforming government 2024-10, Vol.18 (3), p.400-416
Hauptverfasser: Kyriakou, Niki, Loukis, Euripidis N., Maragoudakis, Manolis
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container_title Transforming government
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creator Kyriakou, Niki
Loukis, Euripidis N.
Maragoudakis, Manolis
description 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
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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. 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subjects American Recovery & Reinvestment Act 2009-US
Artificial intelligence
Companies
COVID-19
Data
Economic activity
Economic crisis
Economic growth
Economic policy
Economic research
Exploitation
GDP
Government agencies
Gross Domestic Product
Human resources
International finance
Intervention
Liquidity
Prediction models
Profits
Program implementation
Public finance
Radicalism
Resilience
Social programs
Value
title Predicting firms’ resilience to economic crisis using artificial intelligence for optimizing economic stimulus programs
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