• norsk
    • English
  • norsk 
    • norsk
    • English
  • Logg inn
Vis innførsel 
  •   Hjem
  • Norges Handelshøyskole
  • Thesis
  • Master Thesis
  • Vis innførsel
  •   Hjem
  • Norges Handelshøyskole
  • Thesis
  • Master Thesis
  • Vis innførsel
JavaScript is disabled for your browser. Some features of this site may not work without it.

Bankruptcy prediction : static logit and discrete hazard models incorporating macoreconomic dependencies and industry effects

Sheikh, Suleman; Yahya, Muhammad
Master thesis
Thumbnail
Åpne
masterthesis.pdf (1.477Mb)
Permanent lenke
http://hdl.handle.net/11250/2383056
Utgivelsesdato
2015
Metadata
Vis full innførsel
Samlinger
  • Master Thesis [3748]
Sammendrag
In this thesis, we present firm default prediction models based on firm financial statements

and macroeconomic variables. We seek to develop reliable models to forecast out-of-sample

default probability, and we are particularly interested in exploring the impact of

incorporating macroeconomic variables and industry effects. To the best of our knowledge,

this is the first study to account for both macroeconomic dependencies and industry effects

in one analysis. Additionally, we investigate the impact of the 2008 financial crisis on

bankruptcies.

We develop five models, one static logit model and four hazard models, and compare the

out-of-sample predictive performance of these models. To explore the impact of industry

effects and the financial crisis, our study includes 562 U.S. public companies across all

sectors (except financial) that filed for bankruptcy between 2003 and 2013. These were

matched to a control group of non-bankrupt firms.

We find that the cash flow, profitability, leverage, liquidity, solvency, and firm size are all

significant determinants of bankruptcy. The ratio of cash flow from operations to total

liabilities, and total debt to total assets, are the most significant variables in the static logit

model. In addition to these ratios, cash to total assets and net income to total assets are

also among the most important covariates in the hazard models. Next, we find that the

forecasting results are improved by incorporating macroeconomic variables. Finally, we find

that the hazard model with macroeconomic variables and industry effects has the best outof-sample

accuracy.

Kontakt oss | Gi tilbakemelding

Personvernerklæring
DSpace software copyright © 2002-2019  DuraSpace

Levert av  Unit
 

 

Bla i

Hele arkivetDelarkiv og samlingerUtgivelsesdatoForfattereTitlerEmneordDokumenttyperTidsskrifterDenne samlingenUtgivelsesdatoForfattereTitlerEmneordDokumenttyperTidsskrifter

Min side

Logg inn

Statistikk

Besøksstatistikk

Kontakt oss | Gi tilbakemelding

Personvernerklæring
DSpace software copyright © 2002-2019  DuraSpace

Levert av  Unit