Bank failure prediction is an important study for regulators in the banking industry because the failure of a bank leads to devastating consequences. If bank failures are correctly predicted, early warnings can be sent to the responsible authorities for precaution purposes. Therefore, a reliable bank failure prediction or early warning system is invaluable to avoid adverse repercussion effects on other banks and to prevent drastic confidence losses in the society. In this paper, we propose a novel self-organizing neural fuzzy inference system, which functions as an early warning system of bank failures. The system performs accurately based on the auto-generated fuzzy inference rule base. More importantly, the simplified rule base possesses ...
The banking system has been a backbone for most developed and emerging economies. It provides suppor...
The aim of this study is to set the early warning models for the prediction of financial failures of...
Due to the character of the original source materials and the nature of batch digitization, quality ...
Bank failure prediction is an important study for regulators in the banking industry because the fai...
Bank failure prediction is an important issue for the regulators of the banking industries. The coll...
Creating an applicable and precise financial early warning model is highly desirable for decision ma...
This article provides evidence that machine learning methods are suitable for reliably predicting t...
Machine learning algorithms, which have been considered as robust methods in different computational...
Summary The current paper aims to predict bank insolvency before the bankruptcy using neural network...
Experience from the banking crises during the past two decades suggest that advanced prediction mode...
International audienceThis research compares the accuracy of two approaches: traditional statistical...
Forecasting bank failures has been an essential study in the literature due to their significant imp...
Creating an applicable and precise failure prediction system is highly desirable for decision makers...
Summarization: Bank failure prediction models usually combine financial attributes through binary cl...
The study of machine learning has helped create and refine many types of predictive models. These mo...
The banking system has been a backbone for most developed and emerging economies. It provides suppor...
The aim of this study is to set the early warning models for the prediction of financial failures of...
Due to the character of the original source materials and the nature of batch digitization, quality ...
Bank failure prediction is an important study for regulators in the banking industry because the fai...
Bank failure prediction is an important issue for the regulators of the banking industries. The coll...
Creating an applicable and precise financial early warning model is highly desirable for decision ma...
This article provides evidence that machine learning methods are suitable for reliably predicting t...
Machine learning algorithms, which have been considered as robust methods in different computational...
Summary The current paper aims to predict bank insolvency before the bankruptcy using neural network...
Experience from the banking crises during the past two decades suggest that advanced prediction mode...
International audienceThis research compares the accuracy of two approaches: traditional statistical...
Forecasting bank failures has been an essential study in the literature due to their significant imp...
Creating an applicable and precise failure prediction system is highly desirable for decision makers...
Summarization: Bank failure prediction models usually combine financial attributes through binary cl...
The study of machine learning has helped create and refine many types of predictive models. These mo...
The banking system has been a backbone for most developed and emerging economies. It provides suppor...
The aim of this study is to set the early warning models for the prediction of financial failures of...
Due to the character of the original source materials and the nature of batch digitization, quality ...