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Multi-objective Particle Swarm Optimization for Feature Selection in Credit Scoring

机译:信用评分特征选择的多目标粒子群优化

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Credit scoring refers to the use of statistical models to support loan approval decisions. An ever-increasing availability of data on potential borrowers emphasizes the importance of feature selection for scoring models. Traditionally, feature selection has been viewed as a single-objective task. Recent research demonstrates the effectiveness of multi-objective approaches. We propose a novel multi-objective feature selection framework for credit scoring that extends previous work by taking into account data acquisition costs and employing a state-of-the-art particle swarm optimization algorithm. Our framework optimizes three fitness functions: the number of features, data acquisition costs and the AUC. Experiments on nine credit scoring data sets demonstrate a highly competitive performance of the proposed framework.
机译:信用评分是指使用统计模型来支持贷款批准决策。 潜在借款人的数据的不断增加的可用性强调了特征选择对得分模型的重要性。 传统上,特征选择已被视为单一目标任务。 最近的研究表明了多目标方法的有效性。 我们提出了一种新的多目标特征选择框架,用于通过考虑数据采集成本并采用最先进的粒子群优化算法来扩展以前的工作。 我们的框架优化了三种健身功能:功能的数量,数据采集成本和AUC。 九个信用评分数据集的实验表明了拟议框架的竞争性能。

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