In this thesis, we create a new multi-year model for predicting bankruptcies in the Norwegian market. Our emphasis is on utilizing all parts of the financial statements and related information, rather than previously utilized ratios, to predict whether or not companies go bankrupt within the next three years. Our analysis is based on a database that stems from a collaboration of previous research from the Norwegian School of Economics. After thorough cleaning, our final dataset contains 3 327 405 observations with 159 features related to financial, management and sector statements. We perform our analysis utilizing nine models based on nine different machine learning techniques. For evaluation, we optimize our models toward the perc...
The interest in the prediction of corporate bankruptcy is increasing due to the implications associa...
The interest in the prediction of corporate bankruptcy is increasing due to the implications associa...
Bankruptcy prediction is of great utility for all economic stakeholders. Therefore, diverse methods ...
In this thesis, we create a new multi-year model for predicting bankruptcies in the Norwegian market...
Estimating the risk of corporate bankruptcies is of large importance to creditors and in- vestors. F...
This thesis explores the predictive power of different machine learning algorithms in Swedish firm d...
An intensive research from academics and practitioners has been provided regarding models for bankru...
Predicting corporate bankruptcy is one of the fundamental tasks in credit risk assessment. In partic...
Prediction of corporates bankruptcies is a topic that has gained more importance in the last two dec...
This paper presents a deep learning model that challenges what is known in the financial field of co...
We provide a predictive model specifically designed for the Italian economy that classifies solvent ...
In business analytics and the financial world, bankruptcy prediction has been ...
This dissertation aims to enhance the performance of traditional corporate bankruptcy prediction mod...
Bankruptcy is a severe and permanent state of a firm where all stakeholders are facing the consequen...
This paper attempts to evaluate the predictive ability of four machine learning models: logit, decis...
The interest in the prediction of corporate bankruptcy is increasing due to the implications associa...
The interest in the prediction of corporate bankruptcy is increasing due to the implications associa...
Bankruptcy prediction is of great utility for all economic stakeholders. Therefore, diverse methods ...
In this thesis, we create a new multi-year model for predicting bankruptcies in the Norwegian market...
Estimating the risk of corporate bankruptcies is of large importance to creditors and in- vestors. F...
This thesis explores the predictive power of different machine learning algorithms in Swedish firm d...
An intensive research from academics and practitioners has been provided regarding models for bankru...
Predicting corporate bankruptcy is one of the fundamental tasks in credit risk assessment. In partic...
Prediction of corporates bankruptcies is a topic that has gained more importance in the last two dec...
This paper presents a deep learning model that challenges what is known in the financial field of co...
We provide a predictive model specifically designed for the Italian economy that classifies solvent ...
In business analytics and the financial world, bankruptcy prediction has been ...
This dissertation aims to enhance the performance of traditional corporate bankruptcy prediction mod...
Bankruptcy is a severe and permanent state of a firm where all stakeholders are facing the consequen...
This paper attempts to evaluate the predictive ability of four machine learning models: logit, decis...
The interest in the prediction of corporate bankruptcy is increasing due to the implications associa...
The interest in the prediction of corporate bankruptcy is increasing due to the implications associa...
Bankruptcy prediction is of great utility for all economic stakeholders. Therefore, diverse methods ...