In the present study we propose a new classification technique based on genetic algorithm and neural network, optimized for the cost-sensitive measure and applied to retail credit risk assessment. The relative cost of misclassification, which properly accounts for different misclassification costs of minority and majority classes, is used as the primary evaluation measure. The test of the new algorithm is performed on Croatian and German retail credit datasets for seven different cost ratios. An empirical comparison with others in the literature presented models demonstrates the potential of the new technique in terms of misclassification costs
Abstract. Credit risk analysis is an important topic in the financial risk management. Due to recent...
In the conditions where the information representing the creditworthiness of bank customers has a la...
Credit risk and business failure classification and prediction are a major topic in financial risk m...
Summarization: In this paper, a new procedure that utilizes a Genetic algorithm in order to solve th...
Credit risk interprets as the probability of obligations non-repayment by customer in due date is co...
Credit Decisions are extremely vital for any type of financial institution because it can stimulate ...
Summarization: The classification problem consists of using some known objects, usually described by...
The class imbalance in financial data sets is prevalent and problematic when evaluating credit risk...
Credit models are useful to evaluate the risk of consumer loans. The application of the technique wi...
Summarization: The assessment of credit risk usually involves the development of rating models that ...
In this thesis, we examine the machine learning models logistic regression, multilayer perceptron an...
This thesis focuses on application of artificial intelligence techniques in credit risk management. ...
The Basel Committee on Banking Supervision proposes a capital adequacy framework that allows banks t...
Baysan Method for a Credit Risk Management This paper presents a method combining popular machine le...
The Basel Capital Accord II establishes a new framework for the management of risks in the banking s...
Abstract. Credit risk analysis is an important topic in the financial risk management. Due to recent...
In the conditions where the information representing the creditworthiness of bank customers has a la...
Credit risk and business failure classification and prediction are a major topic in financial risk m...
Summarization: In this paper, a new procedure that utilizes a Genetic algorithm in order to solve th...
Credit risk interprets as the probability of obligations non-repayment by customer in due date is co...
Credit Decisions are extremely vital for any type of financial institution because it can stimulate ...
Summarization: The classification problem consists of using some known objects, usually described by...
The class imbalance in financial data sets is prevalent and problematic when evaluating credit risk...
Credit models are useful to evaluate the risk of consumer loans. The application of the technique wi...
Summarization: The assessment of credit risk usually involves the development of rating models that ...
In this thesis, we examine the machine learning models logistic regression, multilayer perceptron an...
This thesis focuses on application of artificial intelligence techniques in credit risk management. ...
The Basel Committee on Banking Supervision proposes a capital adequacy framework that allows banks t...
Baysan Method for a Credit Risk Management This paper presents a method combining popular machine le...
The Basel Capital Accord II establishes a new framework for the management of risks in the banking s...
Abstract. Credit risk analysis is an important topic in the financial risk management. Due to recent...
In the conditions where the information representing the creditworthiness of bank customers has a la...
Credit risk and business failure classification and prediction are a major topic in financial risk m...