Improved Methods for Predicting the Financial Vulnerability of Nonprofit Organizations
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- Jaroslav Mazanec & Viera Bartosova & Patrik Bohm, 2022. "Logit Model for Estimating Non-Profit Organizations’ Financial Status as a Part of Non-Profit Financial Management," Mathematics, MDPI, vol. 10(13), pages 1-18, June.
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Keywords
hazard analysis; financial failure; time-at-risk; not-for-profit organizations;All these keywords.
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