This study aims to shed light on the debate concerning the choice between discrete-time and continuous-time hazard models in making bankruptcy or any binary prediction using interval censored data. Building on the theoretical suggestions from various disciplines, we empirically compare widely used discrete-time hazard models (with logit and clog-log links) and continuous-time Cox Proportional Hazards (CPH) model in predicting bankruptcy and financial distress of the United States Small and Medium-Sized Enterprises (SMEs). Consistent with the theoretical arguments, we report that discrete-time hazard models are superior to continuous-time CPH model in making binary predictions using interval censored data. Moreover, hazard models developed u...
In light of the speedy development in the economics market, corporate bankruptcy problems have becom...
While the world economy is slowly recovering, there are still many uncertainties in the economic env...
As a contribution to bank regulation by improving the accuracy of predicting failed banks, I first i...
This study aims to shed light on the debate concerning the choice between discrete-time and continuo...
This study aims to shed light on the debate concerning the choice between discrete-time and continuo...
This paper investigates the extent to which the size affects the SME probabilities of bankruptcy. Us...
The recent dramatic increase in the corporate bankruptcy rate, coupled with a similar rate of increa...
This paper investigates the extent to which the size affects the SME probabilities of bankruptcy. Us...
The purpose of this master thesis is to (i) compare the out-of-sample prediction power of one static...
In face of the current economic and financial environment, predicting corporate bankruptcy is arguab...
The purpose of this paper is to build an alternative method of bankruptcy prediction that accounts f...
This study uses a hazard model with data on 3392 corporate bankruptcies by U.S. public companies dur...
Since bankruptcy prediction became a popular research topic in the mid-1960s the model used for eval...
In the past the problem of financial distress has been investigated mainly through discriminant anal...
Corporate probability of default (PD) prediction is vitally important for risk management and asset ...
In light of the speedy development in the economics market, corporate bankruptcy problems have becom...
While the world economy is slowly recovering, there are still many uncertainties in the economic env...
As a contribution to bank regulation by improving the accuracy of predicting failed banks, I first i...
This study aims to shed light on the debate concerning the choice between discrete-time and continuo...
This study aims to shed light on the debate concerning the choice between discrete-time and continuo...
This paper investigates the extent to which the size affects the SME probabilities of bankruptcy. Us...
The recent dramatic increase in the corporate bankruptcy rate, coupled with a similar rate of increa...
This paper investigates the extent to which the size affects the SME probabilities of bankruptcy. Us...
The purpose of this master thesis is to (i) compare the out-of-sample prediction power of one static...
In face of the current economic and financial environment, predicting corporate bankruptcy is arguab...
The purpose of this paper is to build an alternative method of bankruptcy prediction that accounts f...
This study uses a hazard model with data on 3392 corporate bankruptcies by U.S. public companies dur...
Since bankruptcy prediction became a popular research topic in the mid-1960s the model used for eval...
In the past the problem of financial distress has been investigated mainly through discriminant anal...
Corporate probability of default (PD) prediction is vitally important for risk management and asset ...
In light of the speedy development in the economics market, corporate bankruptcy problems have becom...
While the world economy is slowly recovering, there are still many uncertainties in the economic env...
As a contribution to bank regulation by improving the accuracy of predicting failed banks, I first i...