Forecasting bank failures has been an essential study in the literature due to their significant impact on the economic prosperity of a country. Acting as an intermediary player, banks channel funds from those with surplus capital to those who require capital to carry out their economic activities. Therefore, it is essential to generate early warning systems that could warn banks and stakeholders in case of financial turbulence. In this paper, three machine learning models named as GLMBoost, XGBoost, and SMO were used to forecast bank failures. We used commercial bank failure data of Turkey between 1997 and 2001, where we have 17 failed and 20 healthy banks. Our results show that the Sequential Minimal Optimization and GLMBoost provide the ...
Customer churn is defined as the tendency of customers to cease doing business with a company in a g...
Makro ekonomi için önem arz eden konuların başında banka başarısızlıkları gelmektedir. Bu çalışmada ...
Bank failure prediction is an important study for regulators in the banking industry because the fai...
This article provides evidence that machine learning methods are suitable for reliably predicting t...
International audienceThis research compares the accuracy of two approaches: traditional statistical...
Experience from the banking crises during the past two decades suggest that advanced prediction mode...
The aim of this study is to set the early warning models for the prediction of financial failures of...
The study of machine learning has helped create and refine many types of predictive models. These mo...
In this study, neural network models are introduced and employed for the classification of failed no...
I investigate the determinants of bank failures after the financial crisis of the years 2007 - 2009 ...
Risk management has been a topic of great interest to Michael McAleer. Even as recent as 2020, his p...
Banking risk management has become more important during the last 20 years in response to a worldwid...
The thesis consists of six chapters. Each chapter can be read independently of the others, but all s...
The objective of this paper is to propose a methodological framework for constructing the integrated...
Summarization: Bank failure prediction models usually combine financial attributes through binary cl...
Customer churn is defined as the tendency of customers to cease doing business with a company in a g...
Makro ekonomi için önem arz eden konuların başında banka başarısızlıkları gelmektedir. Bu çalışmada ...
Bank failure prediction is an important study for regulators in the banking industry because the fai...
This article provides evidence that machine learning methods are suitable for reliably predicting t...
International audienceThis research compares the accuracy of two approaches: traditional statistical...
Experience from the banking crises during the past two decades suggest that advanced prediction mode...
The aim of this study is to set the early warning models for the prediction of financial failures of...
The study of machine learning has helped create and refine many types of predictive models. These mo...
In this study, neural network models are introduced and employed for the classification of failed no...
I investigate the determinants of bank failures after the financial crisis of the years 2007 - 2009 ...
Risk management has been a topic of great interest to Michael McAleer. Even as recent as 2020, his p...
Banking risk management has become more important during the last 20 years in response to a worldwid...
The thesis consists of six chapters. Each chapter can be read independently of the others, but all s...
The objective of this paper is to propose a methodological framework for constructing the integrated...
Summarization: Bank failure prediction models usually combine financial attributes through binary cl...
Customer churn is defined as the tendency of customers to cease doing business with a company in a g...
Makro ekonomi için önem arz eden konuların başında banka başarısızlıkları gelmektedir. Bu çalışmada ...
Bank failure prediction is an important study for regulators in the banking industry because the fai...