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Title Financial modeling trends for production companies in the context of Industry 4.0
Authors Kartanaitė, I.
Kovalov, Bohdan Leonidovych  
Kubatko, Oleksandr Vasylovych  
Krušinskas, R.
ORCID http://orcid.org/0000-0002-1900-4090
http://orcid.org/0000-0001-6396-5772
Keywords Industry 4.0
financial modeling
production management
artificial intelligence
Type Article
Date of Issue 2021
URI https://essuir.sumdu.edu.ua/handle/123456789/83359
Publisher LLC “СPС “Business Perspectives”
License Creative Commons Attribution 4.0 International License
Citation Inga Kartanaitė, Bohdan Kovalov, Oleksandr Kubatko and Rytis Krušinskas (2021). Financial modeling trends for production companies in the context of Industry 4.0. Investment Management and Financial Innovations, 18(1), 270-284. doi:10.21511/imfi.18(1).2021.23
Abstract Over the years, technological progress has accelerated highly, and the speed, flexibility, human error reduction, and the ability to manage the process in real time have become more critical and required production companies to adapt production and business models according to the needs. The demand for real-time decision support systems adapted to these raising business needs is continuously growing. Nevertheless, businesses usually face challenges in identifying new indicators, data sources, and appropriate financial modeling methods to analyze them. This paper aims to define and summarize the main financial/economic forecasting methods for production companies in the context of Industry 4.0. Main findings show forecasting accuracy of up to 96% when combining economic and demand information, optimal forecasting period from 10 months to five years, more frequent use of soft indicators in forecasting, the relationship between company’s size and production planning. Four groups of indicators used in financial modeling, such as (I) production-related, (II) customers’ and demand-oriented, (III) industry-specific, and (IV) media information indicators, were separated. The analysis forms a suggestion for decision-makers to pay more attention to the forecasting object identification, indicators’ selection peculiarities, data collection possibilities, and the choice of appropriate methods of financial modeling.
Appears in Collections: Наукові видання (ННІ БіЕМ)

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