Company bankruptcy is often a very big problem for companies. The impact of bankruptcy can cause losses to elements of the company such as owners, investors, employees, and consumers. One way to prevent bankruptcy is to predict the possibility of bankruptcy based on the company's financial data. Therefore, this study aims to find the best predictive model or method to predict company bankruptcy using the dataset from Polish companies bankruptcy. The prediction analysis process uses the best feature selection and ensemble learning. The best feature selection is selected using feature importance to XGBoost with a weight value filter of 10. The ensemble learning method used is stacking. Stacking is composed of the base model and meta learner. ...
Bankruptcy has recently upraised as an excessive concern due to the recent world crisis. Early forec...
International audienceRecently, ensemble-based machine learning models have been widely used and hav...
Corporate bankruptcy prediction has attracted significant research attention from business academics...
Company bankruptcy is often a very big problem for companies. The impactof bankruptcy can cause loss...
Bankruptcy prediction is of great utility for all economic stakeholders. Therefore, diverse methods ...
Article focuses on the prediction of bankruptcy of the 1,000 medium-sized retail business companies ...
In business, have many competitions between companies occur to obtain as many profits as possible, F...
Corporate bankruptcy has been a cause of concern for business stakeholders including the management,...
This article focuses on the problem of binary classification of 902 small- and medium-sized engineer...
Bankruptcy prediction problem has been intensively studied over the past decades. From traditional s...
Estimating the risk of corporate bankruptcies is of large importance to creditors and in- vestors. F...
An intensive research from academics and practitioners has been provided regarding models for bankru...
In business analytics and the financial world, bankruptcy prediction has been ...
Bankruptcies can have serious implications for regulators, investors and the economy due to increasi...
This dissertation aims to enhance the performance of traditional corporate bankruptcy prediction mod...
Bankruptcy has recently upraised as an excessive concern due to the recent world crisis. Early forec...
International audienceRecently, ensemble-based machine learning models have been widely used and hav...
Corporate bankruptcy prediction has attracted significant research attention from business academics...
Company bankruptcy is often a very big problem for companies. The impactof bankruptcy can cause loss...
Bankruptcy prediction is of great utility for all economic stakeholders. Therefore, diverse methods ...
Article focuses on the prediction of bankruptcy of the 1,000 medium-sized retail business companies ...
In business, have many competitions between companies occur to obtain as many profits as possible, F...
Corporate bankruptcy has been a cause of concern for business stakeholders including the management,...
This article focuses on the problem of binary classification of 902 small- and medium-sized engineer...
Bankruptcy prediction problem has been intensively studied over the past decades. From traditional s...
Estimating the risk of corporate bankruptcies is of large importance to creditors and in- vestors. F...
An intensive research from academics and practitioners has been provided regarding models for bankru...
In business analytics and the financial world, bankruptcy prediction has been ...
Bankruptcies can have serious implications for regulators, investors and the economy due to increasi...
This dissertation aims to enhance the performance of traditional corporate bankruptcy prediction mod...
Bankruptcy has recently upraised as an excessive concern due to the recent world crisis. Early forec...
International audienceRecently, ensemble-based machine learning models have been widely used and hav...
Corporate bankruptcy prediction has attracted significant research attention from business academics...