Abstract

The importance of assessing the financial distress risk of a company is a topic that has been of central value in many different economic fields and since a long time. Until the twenty-first century, most of the studies were concentrated primarily on using mathematical and statistical methods to assess the health of businesses. Many of these studies employed either accounting-based ratios or cash flow-based ratios; even if there is not a unique conclusion, the use of cash flows seems to improve the predictive capacity of the models significantly. Especially in the last twenty-five years, methods derived from different fields started to be applied in forecasting corporate failures, such as artificial neural networks, genetic algorithms, and fuzzy logic.The objective of this study was to test the goodness of the discriminatory power of ratios based only on cash flows using a model that employs genetic algorithms and fuzzy logic. Five countries (Germany, Spain, France, Great Britain, Italy) and five Nace macro sectors (Agriculture, Industry, Services, Construction, Commerce and Food) have been considered in the analysis for a total of around 719-thousand companies. The model has proven to be well-performing on most of the countries and sectors that have been tested. The results obtained are almost all adequate; in particular, in Germany and Spain, results have been particularly good.The main weaknesses of this work are the limited availability of financial data in some countries and the time delay from the reporting of financial statement to the availability of the data through web services. It means that a large-scale risk assessment requires – being useful for the public and the private sectors – greater and faster disclosure of information at European level, and standardization of financial information transparency among countries.

Highlights

  • The lending of money works well in case of trust between parties, or when collateral is used or in case the information asymmetry is reduced

  • The main weaknesses of this work are the limited availability of financial data in some countries and the time delay from the reporting of financial statement to the availability of the data through web services

  • It means that a large-scale risk assessment requires – being useful for the public and the private sectors – greater and faster disclosure of information at European level, and standardization of financial information transparency among countries

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Summary

Introduction

The lending of money works well in case of trust between parties, or when collateral is used or in case the information asymmetry is reduced. Because of COVID-19 and its economic effects on enterprises, the prediction of the insolvency risk has become really popular; but one of the most famous and earlier study how to predict a businesses‟ bankruptcy using financial ratios is owed to Altman‟s (1968). After this milestone, many studies were conducted using financial ratios to forecast corporate failure. Artificial intelligence and optimization algorithms are not a new topic, but their use in the economic field, and in particular in the bankruptcy prediction, is making its way mostly in recent years.

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