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Prediction of Financial Failure Using the Altman and Sherrod Model Study of Saidal Institution of Medea Province between 2017 - 2020

Nariman Djoudi () and Kheira Belhamri ()
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Nariman Djoudi: Université Yahia Fares de Médéa
Kheira Belhamri: Université Yahia Fares de Médéa

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Abstract: This study aims to highlight the importance and effectiveness of using the Altman and Sherrod models in predicting the financial failure of Saidal institution during the period 2017-2020 to give early warning in disclosing the likelihood of bankruptcy. In order to achieve the objectives of the study, the two models were applied based on the institution's financial statements and the most important financial indicators. Thus, the study found that the two models are effective in predicting the future financial failure of Saidal institution during the period studied, 100% is needed.

Keywords: Altman Model Sherrod Model Financial Failure Prediction Saidal Institution. JEL Classification Codes: G17 G32 M4; Altman Model; Sherrod Model; Financial Failure Prediction; Saidal Institution. JEL Classification Codes: G17; G32; M4 (search for similar items in EconPapers)
Date: 2023-12-30
New Economics Papers: this item is included in nep-ara and nep-rmg
Note: View the original document on HAL open archive server: https://shs.hal.science/halshs-04521389
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Published in International Journal of Economic Performance - المجلة الدولية للأداء الاقتصادي, 2023, 06 (03)

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