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Financial Distress Prediction for Small and Medium Enterprises Using Machine Learning Techniques
2021
Engineering Economics
Financial distress prediction is a key challenge every financing provider faces when determining borrower creditworthiness. Inherent opaqueness of Small and Medium Enterprise business complicates credit decision making process, therefore increasing cost to finance and lowering probability of receiving funds. This paper used data on 12.000 SMEs to estimate binomial classifiers for financial distress prediction using Logistic Regression, Artificial Neural Networks and Random Forest techniques.
doi:10.5755/j01.ee.32.1.27382
fatcat:s7wlrdk5wzbkfcyrg5ehalj4ae