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Artificial Neural Networks in Forecasting the Consumer Bankruptcy Risk with Innovative Ratios

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This study aims to develop nine different consumer bankruptcy forecasting models with the help of three types of artificial neural networks and to verify the usefulness of new, innovative ratios for implementation in personal finance. A learning sample comprising 200 consumers, and a testing sample of 500 non-bankrupt and 500 bankrupt consumers from Poland are used. The author employed three research approaches to using the entry variables to the models. The unique feature of this study is the proposition of the use of newly developed ratios in household finance similar to the financial ratio analysis that is commonly used in corporate finance. The proposed ratios demonstrated high predictive abilities. The paper answers following questions – (a) Are the three commonly implemented types of neural networks useful in forecasting personal bankruptcy risk?; (b) Which forecasting technique is the most effective not only from the viewpoint of overall effectiveness, but also from the perspective of Type I and II errors?; (c) Which research approach (minimalization versus maximization) guarantees maximum effectiveness?; (d) Are the newly developed types of ratios effective in forecasting personal risk bankruptcy? The research identifies and fulfills three gaps in the literature, and also delivers practical solutions for identifying the level of consumer bankruptcy risk. It provides effective solutions for forecasting the risk in terms of usable models and also delivers highly informative ratios that combine demographic and financial indicators in the twelve ratios. It is one of the first attempts to implement ratio analyses in the usage of household finance worldwide.

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Kategoria:
Publikacja w czasopiśmie
Typ:
artykuły w czasopismach dostępnych w wersji elektronicznej [także online]
Opublikowano w:
Contemporary Economics strony 391 - 407,
ISSN: 2084-0845
Język:
angielski
Rok wydania:
2024
Opis bibliograficzny:
Korol T., Artificial Neural Networks in Forecasting the Consumer Bankruptcy Risk with Innovative Ratios, Contemporary Economics, 2024,10.5709/ce.1897-9254.545
DOI:
Cyfrowy identyfikator dokumentu elektronicznego (otwiera się w nowej karcie) 10.5709/ce.1897-9254.545
Źródła finansowania:
Weryfikacja:
Politechnika Gdańska

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