The accurate prediction of corporate bankruptcy for the firms in different industries is of a great concern to investors and creditors. Firm-specific data accompany with industry and macroeconomic factors offer a potentially large number of candidate predictors of corporate default. We employ a predictor selection procedure based on non-parametric regression and classification tree method (CART) and test its performance within a standard logistic regression model. Overall entire analyses indicate that the orientation between firm-level determinants and the probability of default is affected by each industry’s characteristics. As well, our selection method represents an efficient way of introducing non-linear effects of predictor variables o...
The aim of this paper is to investigate several aspects of bankruptcy prediction within both theoret...
This paper attempts to evaluate the predictive ability of four machine learning models: logit, decis...
This paper investigates the capability of forecasting models for bankruptcy prediction referring to ...
The accurate prediction of corporate bankruptcy for the firms in different industries is of a great ...
The accurate prediction of corporate bankruptcy for the firms in different industries is of a great ...
The paper aims to assess whether a sensitivity variable, industry beta, has a significant impact on ...
This paper attempts to evaluate the predictive ability of three default prediction models: the marke...
In the literature of predicting corporate default, it is an ad-hoc process to select the predictors ...
The main aim of the research is to examine the importance of Merton\u27s (1974) distance-to- default...
This thesis identifies the optimal set of corporate default drivers and examines the prediction perf...
Default prediction provides a way to control and direct firms in achieving their goals. The common a...
I combine two fields of research on default prediction by empirically testing a bankruptcy predictio...
This paper investigates the relevance of financial and economic variables as determinants of firm de...
Default prediction provides a way to control and direct firms in achieving their goals. The common a...
The aim of this paper is to investigate several aspects of bankruptcy prediction within both theoret...
This paper attempts to evaluate the predictive ability of four machine learning models: logit, decis...
This paper investigates the capability of forecasting models for bankruptcy prediction referring to ...
The accurate prediction of corporate bankruptcy for the firms in different industries is of a great ...
The accurate prediction of corporate bankruptcy for the firms in different industries is of a great ...
The paper aims to assess whether a sensitivity variable, industry beta, has a significant impact on ...
This paper attempts to evaluate the predictive ability of three default prediction models: the marke...
In the literature of predicting corporate default, it is an ad-hoc process to select the predictors ...
The main aim of the research is to examine the importance of Merton\u27s (1974) distance-to- default...
This thesis identifies the optimal set of corporate default drivers and examines the prediction perf...
Default prediction provides a way to control and direct firms in achieving their goals. The common a...
I combine two fields of research on default prediction by empirically testing a bankruptcy predictio...
This paper investigates the relevance of financial and economic variables as determinants of firm de...
Default prediction provides a way to control and direct firms in achieving their goals. The common a...
The aim of this paper is to investigate several aspects of bankruptcy prediction within both theoret...
This paper attempts to evaluate the predictive ability of four machine learning models: logit, decis...
This paper investigates the capability of forecasting models for bankruptcy prediction referring to ...