One of the most well-known bankruptcy prediction models was developed by Altman [1968] using multivariate discriminant analysis. Since Altman\u27s model, a multitude of bankruptcy prediction models have flooded the literature. The primary goal of this paper is to summarize and analyze existing research on bankruptcy prediction studies in order to facilitate more productive future research in this area. This paper traces the literature on bankruptcy prediction from the 1930\u27s, when studies focused on the use of simple ratio analysis to predict future bankruptcy, to present. The authors discuss how bankruptcy prediction studies have evolved, highlighting the different methods, number and variety of factors, and specific uses of models. Ana...
In corporate finance, the early prediction of financial distress is considered more important as ano...
Corporate bankruptcy prediction has attracted significant research attention from business academics...
Of the methods used to build bankruptcy prediction models in the last twenty years, neural networks ...
One of the most well-known bankruptcy prediction models was developed by Altman [1968] using multiva...
Bankruptcy prediction of economic institutions is considered a necessary matter at the present time ...
Bankruptcy prediction has been a fruitful area of research. Univariate analysis and discriminant ana...
Bankruptcy prediction of economic institutions is considered a necessary matter at the present time ...
This thesis examines two major bankruptcy prediction models existing in the literature: Altman's Z-s...
In business analytics and the financial world, bankruptcy prediction has been ...
Bankruptcy prediction has been a fruitful area of research. Univariate analysis and discriminant ana...
The need for corporate bankruptcy prediction models arises in 1960 after the increase in incidence o...
This research is driven by the conclusions of Bellovary, Giacomino and Akers (2007), who stated at t...
The article attempts to answer the question whether or not the latest bankruptcy prediction techniqu...
This research is driven by the conclusions of Bellovary, Giacomino and Akers (2007), who stated at t...
Since bankruptcy prediction became a popular research topic in the mid-1960s the model used for eval...
In corporate finance, the early prediction of financial distress is considered more important as ano...
Corporate bankruptcy prediction has attracted significant research attention from business academics...
Of the methods used to build bankruptcy prediction models in the last twenty years, neural networks ...
One of the most well-known bankruptcy prediction models was developed by Altman [1968] using multiva...
Bankruptcy prediction of economic institutions is considered a necessary matter at the present time ...
Bankruptcy prediction has been a fruitful area of research. Univariate analysis and discriminant ana...
Bankruptcy prediction of economic institutions is considered a necessary matter at the present time ...
This thesis examines two major bankruptcy prediction models existing in the literature: Altman's Z-s...
In business analytics and the financial world, bankruptcy prediction has been ...
Bankruptcy prediction has been a fruitful area of research. Univariate analysis and discriminant ana...
The need for corporate bankruptcy prediction models arises in 1960 after the increase in incidence o...
This research is driven by the conclusions of Bellovary, Giacomino and Akers (2007), who stated at t...
The article attempts to answer the question whether or not the latest bankruptcy prediction techniqu...
This research is driven by the conclusions of Bellovary, Giacomino and Akers (2007), who stated at t...
Since bankruptcy prediction became a popular research topic in the mid-1960s the model used for eval...
In corporate finance, the early prediction of financial distress is considered more important as ano...
Corporate bankruptcy prediction has attracted significant research attention from business academics...
Of the methods used to build bankruptcy prediction models in the last twenty years, neural networks ...