The focus of this research is to demonstrate how probabilistic models may be used to provide early warnings for bank failures. While prior research in the auditing literature has recognized the applicability of a Bayesian belief revision framework for many audit tasks, empirical evidence has suggested that auditors' cognitive decision processes often violate probability axioms. We believe that some of the well-documented cognitive limitations of a human auditor can be compensated by an automated system. In particular, we demonstrate that a formal belief revision scheme can be incorporated into an automated system to provide reliable probability estimates for early warning of bank failures. The automated system examines financial ratios as p...
Bank failure prediction is an important study for regulators in the banking industry because the fai...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/147161/1/rssd00559.pd
The objectives of this study were specified in Chapter 1 as: (1) To develop a financial model to ass...
An auditor\u27s verdict on client\u27s financial health is delivered in the form of a going concern ...
Corporate failure or bankruptcy is costly to investors as well as to society in general. Given the h...
Auditors are faced with the task of formulating opinions about the fairness of their clients' financ...
The study is dedicated to analyzing the possibilities of applying probabilistic models in Bayesian n...
The tax history of a company is used to predict corporate bankruptcies using Bayesian inference. Our...
Existent empirical evidence on the relative performance of auditors’ going concern opinions versus s...
This paper proposes a new approach of how to test the validity of bank ratings assigned by Rating Ag...
The succession of banking crises in which most have resulted in huge economic and financial losses,...
grantor: University of TorontoThe traditional methods used for credit risk have a number ...
This paper provides empirical evidence on the prediction of non-financial companies’ failure. We dev...
We propose a Bayesian approach to reasoning under uncertainty in on-line auditing of Statistical Dat...
The management of operational risk in the banking industry has undergone explosive changes over the ...
Bank failure prediction is an important study for regulators in the banking industry because the fai...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/147161/1/rssd00559.pd
The objectives of this study were specified in Chapter 1 as: (1) To develop a financial model to ass...
An auditor\u27s verdict on client\u27s financial health is delivered in the form of a going concern ...
Corporate failure or bankruptcy is costly to investors as well as to society in general. Given the h...
Auditors are faced with the task of formulating opinions about the fairness of their clients' financ...
The study is dedicated to analyzing the possibilities of applying probabilistic models in Bayesian n...
The tax history of a company is used to predict corporate bankruptcies using Bayesian inference. Our...
Existent empirical evidence on the relative performance of auditors’ going concern opinions versus s...
This paper proposes a new approach of how to test the validity of bank ratings assigned by Rating Ag...
The succession of banking crises in which most have resulted in huge economic and financial losses,...
grantor: University of TorontoThe traditional methods used for credit risk have a number ...
This paper provides empirical evidence on the prediction of non-financial companies’ failure. We dev...
We propose a Bayesian approach to reasoning under uncertainty in on-line auditing of Statistical Dat...
The management of operational risk in the banking industry has undergone explosive changes over the ...
Bank failure prediction is an important study for regulators in the banking industry because the fai...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/147161/1/rssd00559.pd
The objectives of this study were specified in Chapter 1 as: (1) To develop a financial model to ass...