To Fail or Not to Fail: An Algorithm for SME Survival Prediction Using Accounting Data
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José Manuel Pereira | Humberto Ribeiro | Amélia Ferreira da Silva | Sandra Raquel Alves | H. Ribeiro | J. Pereira | A. Silva | S. Alves
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