BALANCED BAGGING WITH EXPECTATION MAXIMIZATION IMPUTATION IN BANKRUPTCY PREDICTION – APPLICATION ON ROMANIAN COMPANIES
CLEMENT Claudiu, Alexandru Ioan Cuza University of Iasi
Abstract:
Bankruptcy prediction models are widely used by lending institutions, policy makers or investors. Despite the large volume of international research, limited studies have addressed the particularities of Romanian companies. Balanced Bagging is an Ensemble Method that uses a voting mechanism for a classification task. Expectation Maximization Imputation helps replacing the missing data. In this study we report a promising accuracy performance of 90.03% for the model of Balanced Bagging with Expectation Maximization Imputation on a dataset of more than 20,000 Romanian companies.
Keywords: bankruptcy, machine learning, classification
JEL Classification: C58, G33, M10
Volume: 74, Issue: 1
Pages: 40 - 50
Publication date: August, 2022
DOI: 10.56043/reveco-2022-0003
Download the article: http://economice.ulbsibiu.ro/revista.economica/archive/74103clement.pdf
CLEMENT Claudiu, 2022, BALANCED BAGGING WITH EXPECTATION MAXIMIZATION IMPUTATION IN BANKRUPTCY PREDICTION – APPLICATION ON ROMANIAN COMPANIES, Revista Economică, Lucian Blaga University of Sibiu, Faculty of Economic Sciences, vol.74(1), pages 40-50, August. DOI: https://doi.org/10.56043/reveco-2022-0003