The field of bankruptcy prediction has experienced a notable increase of interest in recent years. Machine Learning (ML) models have been an essential component of developing more sophisticated models. Previous studies within bankruptcy prediction have not evaluated how well ML techniques adopt for data sets of companies with higher credit risks. This study introduces a binary decision rule for identifying companies with higher credit risks (abnormal companies). Two categories of abnormal companies are explored based on the activity of: (1) abnormal credit risk analysis (”AC”, herein) and (2) abnormal payment remarks (”AP”, herein) among small Swedish limited companies. Companies not fulfilling the abnormality criteria are considered normal...
Bankruptcies have been a sensitive topic all around the world for over 50 years. From their research...
In this thesis, we create a new multi-year model for predicting bankruptcies in the Norwegian marke...
Bankruptcies have been a sensitive topic all around the world for over 50 years. From their research...
The field of bankruptcy prediction has experienced a notable increase of interest in recent years. M...
Att identifiera finansiella svårigheter vid bedömning av ett företags ekonomiska situation är väsent...
This paper presents a deep learning model that challenges what is known in the financial field of co...
This paper presents a deep learning model that challenges what is known in the financial field of co...
Bankruptcy is a problem for the society in form of high costs for including suppliers, customers, em...
Bankruptcy is a problem for the society in form of high costs for including suppliers, customers, em...
Bankruptcy is a problem for the society in form of high costs for including suppliers, customers, em...
Bankruptcy is a problem for the society in form of high costs for including suppliers, customers, em...
Varje år går ca 6 000 företag i konkurs och det påverkar intressenter i form av kreditgivare, levera...
Varje år går ca 6 000 företag i konkurs och det påverkar intressenter i form av kreditgivare, levera...
Temaet for denne oppgaven er konkursprediksjon. Formålet er å undersøke hvorvidt statistiske modell...
Prediksjon av konkurs hos selskaper er et emne som er relevant både hos investorer, kreditorer, bank...
Bankruptcies have been a sensitive topic all around the world for over 50 years. From their research...
In this thesis, we create a new multi-year model for predicting bankruptcies in the Norwegian marke...
Bankruptcies have been a sensitive topic all around the world for over 50 years. From their research...
The field of bankruptcy prediction has experienced a notable increase of interest in recent years. M...
Att identifiera finansiella svårigheter vid bedömning av ett företags ekonomiska situation är väsent...
This paper presents a deep learning model that challenges what is known in the financial field of co...
This paper presents a deep learning model that challenges what is known in the financial field of co...
Bankruptcy is a problem for the society in form of high costs for including suppliers, customers, em...
Bankruptcy is a problem for the society in form of high costs for including suppliers, customers, em...
Bankruptcy is a problem for the society in form of high costs for including suppliers, customers, em...
Bankruptcy is a problem for the society in form of high costs for including suppliers, customers, em...
Varje år går ca 6 000 företag i konkurs och det påverkar intressenter i form av kreditgivare, levera...
Varje år går ca 6 000 företag i konkurs och det påverkar intressenter i form av kreditgivare, levera...
Temaet for denne oppgaven er konkursprediksjon. Formålet er å undersøke hvorvidt statistiske modell...
Prediksjon av konkurs hos selskaper er et emne som er relevant både hos investorer, kreditorer, bank...
Bankruptcies have been a sensitive topic all around the world for over 50 years. From their research...
In this thesis, we create a new multi-year model for predicting bankruptcies in the Norwegian marke...
Bankruptcies have been a sensitive topic all around the world for over 50 years. From their research...