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Composite financial performance index prediction – a neural networks approach

    Diana Claudia Sabău Popa   Affiliation
    ; Dorina Nicoleta Popa   Affiliation
    ; Victoria Bogdan   Affiliation
    ; Ramona Simut   Affiliation

Abstract

Financial indicators are the most used variables in measuring the business performance of companies, signaling about the financial position, comprehensive income, and other significant reporting aspects. In a competitive environment, the performance measurement model allows performing comparative analysis in the same industry and between industries. This paper aims to design a composite financial index to determine the financial performance of listed companies, further used in predicting business performance through neural networks. Principal components analysis was used to build a composite financial index, employing four traditional accounting indicators and four value-based indicators for the period 2011–2018. Five experiments were conducted to predict business performance through the composite financial index. The results showed that observations from two years, of the first three experiments, indicate a better predictive behavior than the same experiments using observations from one year. Therefore, we concluded that observations from more than one year are necessary to predict the value of the financial performance index. Findings led us to the conclusion that recurrent neural networks model predicted better financial performance composite index when taken into consideration more real data for the financial performance index (2012–2018) instead of just for one year (2018).

Keyword : business performance, financial indicators, composite index, PCA, predictive behaviour, neural networks

How to Cite
Sabău Popa, D. C., Popa, D. N., Bogdan, V., & Simut, R. (2021). Composite financial performance index prediction – a neural networks approach. Journal of Business Economics and Management, 22(2), 277-296. https://doi.org/10.3846/jbem.2021.14000
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Feb 1, 2021
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