Journal Article10.1016/J.ESWA.2013.09.004
Genetic algorithm-based heuristic for feature selection in credit risk assessment
Stjepan Oreški,Goran Oreški +1 more
TL;DR: Experimental results that were achieved using the proposed novel HGA-NN classifier are promising for feature selection and classification in retail credit risk assessment and indicate that the H GA-NNclassifier is a promising addition to existing data mining techniques.
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Abstract: In this paper, an advanced novel heuristic algorithm is presented, the hybrid genetic algorithm with neural networks (HGA-NN), which is used to identify an optimum feature subset and to increase the classification accuracy and scalability in credit risk assessment. This algorithm is based on the following basic hypothesis: the high-dimensional input feature space can be preliminarily restricted to only the important features. In this preliminary restriction, fast algorithms for feature ranking and earlier experience are used. Additionally, enhancements are made in the creation of the initial population, as well as by introducing an incremental stage in the genetic algorithm. The performances of the proposed HGA-NN classifier are evaluated using a real-world credit dataset that is collected at a Croatian bank, and the findings are further validated on another real-world credit dataset that is selected in a UCI database. The classification accuracy is compared with that presented in the literature. Experimental results that were achieved using the proposed novel HGA-NN classifier are promising for feature selection and classification in retail credit risk assessment and indicate that the HGA-NN classifier is a promising addition to existing data mining techniques.
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Information gain directed genetic algorithm wrapper feature selection for credit rating
TL;DR: A novel approach to feature selection in credit scoring applications is proposed, called Information Gain Directed Feature Selection algorithm (IGDFS), which performs the ranking of features based on information gain, propagates the top m features through the GA wrapper (GAW) algorithm using three classical machine learning algorithms of KNN, Naive Bayes and Support Vector Machine for credit scoring.
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From explanations to feature selection: assessing SHAP values as feature selection mechanism
Wilson E. Marcilio,Danilo Medeiros Eler +1 more
- 01 Nov 2020
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