The Application of Graphic Methods and the DEA in Predicting the Risk of Bankruptcy
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- Xinlin Wang & Zs'ofia Kraussl & Mats Brorsson, 2024. "Datasets for Advanced Bankruptcy Prediction: A survey and Taxonomy," Papers 2411.01928, arXiv.org.
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Keywords
data envelopment analysis; financial distress; multidimensional scaling; prediction; principal component analysis; risk;All these keywords.
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