Summarization: The development of credit risk assessment models is often considered within a classification context. Recent studies on the development of classification models have shown that a combination of methods often provides improved classification results compared to a single-method approach. Within this context, this study explores the combination of different classification methods in developing efficient models for credit risk assessment. A variety of methods are considered in the combination, including machine learning approaches and statistical techniques. The results illustrate that combined models can outperform individual models for credit risk analysis. The analysis also covers important issues such as the impact of using d...
Consumer credit risk assessment involves the use of risk assessment tools to manage a borrower’s acc...
The paper introduces a novel approach to ensemble modeling as a weighted model average technique. Th...
In this thesis, we analyse and evaluate classification models for panel credit risk data. Variables ...
Summarization: The development of credit risk assessment models is often considered within a classif...
Summarization: Credit risk rating is an important issue for both financial institutions and companie...
Many techniques have been proposed for credit risk assessment, from statistical models to artificial...
The assessment of financial credit risk constitutes an important, yet challenging research topic acr...
This paper proposes an analytic hierarchy model (AHM) to evaluate classification algorithms for cred...
Part 8: Business Intelligence and SecurityInternational audienceNowadays, compared with the traditio...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
A wide range of classification models have been explored for financial risk prediction, but conclusi...
This thesis aims to investigate different machine learning (ML) models and their performance to find...
To reduce losses and increase profits, financial organizations must evaluate credit risk. In this ar...
This thesis aims to investigate different machine learning (ML) models and their performance to find...
Enterprise Credit Risk becomes important issue in financial and accounting. It includes bankruptcy p...
Consumer credit risk assessment involves the use of risk assessment tools to manage a borrower’s acc...
The paper introduces a novel approach to ensemble modeling as a weighted model average technique. Th...
In this thesis, we analyse and evaluate classification models for panel credit risk data. Variables ...
Summarization: The development of credit risk assessment models is often considered within a classif...
Summarization: Credit risk rating is an important issue for both financial institutions and companie...
Many techniques have been proposed for credit risk assessment, from statistical models to artificial...
The assessment of financial credit risk constitutes an important, yet challenging research topic acr...
This paper proposes an analytic hierarchy model (AHM) to evaluate classification algorithms for cred...
Part 8: Business Intelligence and SecurityInternational audienceNowadays, compared with the traditio...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
A wide range of classification models have been explored for financial risk prediction, but conclusi...
This thesis aims to investigate different machine learning (ML) models and their performance to find...
To reduce losses and increase profits, financial organizations must evaluate credit risk. In this ar...
This thesis aims to investigate different machine learning (ML) models and their performance to find...
Enterprise Credit Risk becomes important issue in financial and accounting. It includes bankruptcy p...
Consumer credit risk assessment involves the use of risk assessment tools to manage a borrower’s acc...
The paper introduces a novel approach to ensemble modeling as a weighted model average technique. Th...
In this thesis, we analyse and evaluate classification models for panel credit risk data. Variables ...