Most approaches to credit scoring generate model parameters by minimising some function of individual error, or by maximising likelihood. In practice, the criteria by which the parameters of a model are determined and the criteria by which models are assessed may differ. Practitioners tend not to be interested in standard measures such as the R2 coefficient for linear regression or the likelihood ratio for logistic regression. Instead, performance will be assessed using global measures such as the GINI coefficient, or by considering the misclassification rate at different points in the distribution of model scores. In this paper an approach using genetic algorithms is described, where the training algorithm is used to directly maximise/mini...
Binary scoring model are widely used to support lending decisions in consumer finance. Applications ...
Credit scoring has obtained more and more attention as the credit industry can benefit from reducing...
In consumer credit markets lending decisions are usually represented as a set of classification prob...
Most approaches to credit scoring generate model parameters by minimising some function of individua...
Classification and regression models are widely used by mainstream credit granting institutions to a...
Credit scoring has been widely investigated in the area of finance, in general, and banking sectors,...
Credit scoring has been widely investigated in the area of finance, in general, and banking sectors,...
In this paper we consider a credit scoring problem. We compare three powerful credit scoring models:...
Multiple classification techniques have been employed for different business applications. In the pa...
Summarization: The assessment of credit risk usually involves the development of rating models that ...
Outranking based models as one of the most important multicriteria decision methods need the definit...
Credit scoring in financial institutions/banks is very important in determining whether it is feasib...
Credit scoring models are the cornerstone of the modern financial industry. After years of developme...
Abstract. In the increasingly competitive credit industry, one of the most interesting and challengi...
The genetic algorithm can be applied to selecting theoretical probability distributions so as to be ...
Binary scoring model are widely used to support lending decisions in consumer finance. Applications ...
Credit scoring has obtained more and more attention as the credit industry can benefit from reducing...
In consumer credit markets lending decisions are usually represented as a set of classification prob...
Most approaches to credit scoring generate model parameters by minimising some function of individua...
Classification and regression models are widely used by mainstream credit granting institutions to a...
Credit scoring has been widely investigated in the area of finance, in general, and banking sectors,...
Credit scoring has been widely investigated in the area of finance, in general, and banking sectors,...
In this paper we consider a credit scoring problem. We compare three powerful credit scoring models:...
Multiple classification techniques have been employed for different business applications. In the pa...
Summarization: The assessment of credit risk usually involves the development of rating models that ...
Outranking based models as one of the most important multicriteria decision methods need the definit...
Credit scoring in financial institutions/banks is very important in determining whether it is feasib...
Credit scoring models are the cornerstone of the modern financial industry. After years of developme...
Abstract. In the increasingly competitive credit industry, one of the most interesting and challengi...
The genetic algorithm can be applied to selecting theoretical probability distributions so as to be ...
Binary scoring model are widely used to support lending decisions in consumer finance. Applications ...
Credit scoring has obtained more and more attention as the credit industry can benefit from reducing...
In consumer credit markets lending decisions are usually represented as a set of classification prob...