The purpose of this research is to create an adequate early warning model for systemic banking crises in Montenegro. The probability of banking crisis occurrence is calculated using discrete dependent variable models, more precisely, estimating logit regression. Afterwards, seven simple logit regressions that individually have two explanatory variables are estimated. Adequate weights have been assigned to all seven regressions using the technique of Bayesian model averaging. The advantage of this technique is that it takes into account the model uncertainty by considering various combinations of models in order to minimize the author’s subjective judgment when determining reliable early warning indicators. The results of Bayesian model aver...
The aim of my thesis is in the first place to show how to deal with a credit risk, and which tools t...
In this paper, we consider the signals approach as an early-warning-system to detect crises. Crisis ...
This paper proposes a new statistical framework originating from the traditional credit-scoring lite...
International audienceWe develop an Early Warning System framework for predicting banking crises in ...
The succession of banking crises in which most have resulted in huge economic and financial losses,...
This thesis develops an early warning system framework for assessing systemic risks and for predicti...
The purpose of this paper is to determine potential indicators of systemic banking crises in five So...
The objective of this paper is to estimate the relative contribution of a wide array of determinants...
This paper is devoted to the problem of forecasting of the banking crisis on the base of logit mode...
This paper contributes to the literature on early warning indicators by applying a Bayesian model av...
Relying on a recently published database of financial crises, this paper assesses an early warning m...
This paper employs a recently developed statistical algorithm in order to build an early warning mod...
The financial crisis that plagued the European economy during 2008-2013 was one of the most severe o...
We built a logistic regression Early Warning Models (EWM) for banking crises in a panel of 47 countr...
The article presents a scientific and methodical approach to the formation of an early warning model...
The aim of my thesis is in the first place to show how to deal with a credit risk, and which tools t...
In this paper, we consider the signals approach as an early-warning-system to detect crises. Crisis ...
This paper proposes a new statistical framework originating from the traditional credit-scoring lite...
International audienceWe develop an Early Warning System framework for predicting banking crises in ...
The succession of banking crises in which most have resulted in huge economic and financial losses,...
This thesis develops an early warning system framework for assessing systemic risks and for predicti...
The purpose of this paper is to determine potential indicators of systemic banking crises in five So...
The objective of this paper is to estimate the relative contribution of a wide array of determinants...
This paper is devoted to the problem of forecasting of the banking crisis on the base of logit mode...
This paper contributes to the literature on early warning indicators by applying a Bayesian model av...
Relying on a recently published database of financial crises, this paper assesses an early warning m...
This paper employs a recently developed statistical algorithm in order to build an early warning mod...
The financial crisis that plagued the European economy during 2008-2013 was one of the most severe o...
We built a logistic regression Early Warning Models (EWM) for banking crises in a panel of 47 countr...
The article presents a scientific and methodical approach to the formation of an early warning model...
The aim of my thesis is in the first place to show how to deal with a credit risk, and which tools t...
In this paper, we consider the signals approach as an early-warning-system to detect crises. Crisis ...
This paper proposes a new statistical framework originating from the traditional credit-scoring lite...