المؤسسات الصغيرة والمتوسطة بين إشكالية التمويل واحتمال التعثر
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University of Ain Temouchent
Abstract
Early prediction of financial distress is a cornerstone for ensuring the continuity of small and
medium-sized enterprises (SMEs) in volatile economic environments. This study evaluates the
effectiveness of artificial intelligence (AI) models, specifically Deep Neural Networks
(DNN)and Genetic Algorithms (GA), in classifying Algerian SMEs based on their financial health
(solvency or insolvency) during the period (2017–2023). The study analyzed financial data from a sample
of 100 SMEsregistered in the National Commercial Register (CNRC), utilizing 15 financial ratios (e.g.,
current ratio, debt ratio, cash ratio) within the Visual Studio Code development environment .
The results revealed a significant outperformance of the Genetic Algorithm model optimized
with Random Forests, achieving a prediction accuracy of 99.46%, compared to the Deep Neural
Network model, which achieved 97.34%. The study also identified specific financial ratios such as the
quick liquidity ratio, and return on assets as having the strongest impact on diagnosing financial distress.
In contrast, other ratios (e.g., fixed asset turnover ratio) exhibited moderate or weak influence
