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Comparison of Profit-Based Multi-Objective Approaches for Feature Selection in Credit Scoring
2021
Algorithms
Feature selection is crucial to the credit-scoring process, allowing for the removal of irrelevant variables with low predictive power. Conventional credit-scoring techniques treat this as a separate process wherein features are selected based on improving a single statistical measure, such as accuracy; however, recent research has focused on meaningful business parameters such as profit. More than one factor may be important to the selection process, making multi-objective optimization methods
doi:10.3390/a14090260
fatcat:lw27qzw7yncfpk3y474xn3hkie