Article ID Journal Published Year Pages File Type
387685 Expert Systems with Applications 2012 7 Pages PDF
Abstract

Many techniques have been proposed for credit risk assessment, from statistical models to artificial intelligence methods. During the last few years, different approaches to classifier ensembles have successfully been applied to credit scoring problems, demonstrating to be generally more accurate than single prediction models. The present paper goes one step beyond by introducing composite ensembles that jointly use different strategies for diversity induction. Accordingly, the combination of data resampling algorithms (bagging and AdaBoost) and attribute subset selection methods (random subspace and rotation forest) for the construction of composite ensembles is explored with the aim of improving the prediction performance. The experimental results and statistical tests show that this new two-level classifier ensemble constitutes an appropriate solution for credit scoring problems, performing better than the traditional single ensembles and very significantly better than individual classifiers.

► We introduce composite ensembles that jointly use different strategies for diversity induction in credit scoring applications. ► The combination of bagging and AdaBoost with random subspace and rotation forest for the construction of two-level ensembles is explored. ► The jointly use of bagging and rotation forest in any order performs better than the other combinations.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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