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Rough set and scatter search metaheuristic based feature selection for credit scoring

机译:基于粗糙集和分散搜索元启发式的特征选择用于信用评分

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摘要

As the credit industry has been growing rapidly, credit scoring models have been widely used by the financial industry during this time to improve cash flow and credit collections. However, a large amount of redundant information and features are involved in the credit dataset, which leads to lower accuracy and higher complexity of the credit scoring model. So, effective feature selection methods are necessary for credit dataset with huge number of features. In this paper, a novel approach, called RSFS, to feature selection based on rough set and scatter search is proposed. In RSFS, conditional entropy is regarded as the heuristic to search the optimal solutions. Two credit datasets in UCI database are selected to demonstrate the competitive performance of RSFS consisted in three credit models including neural network model, J48 decision tree and Logistic regression. The experimental result shows that RSFS has a superior performance in saving the computational costs and improving classification accuracy compared with the base classification methods.
机译:随着信贷行业的快速发展,信贷评分模型已在这段时间内被金融业广泛使用,以改善现金流量和信贷收款。但是,信用数据集中涉及大量冗余信息和特征,这导致信用评分模型的准确性较低,复杂性更高。因此,有效的特征选择方法对于具有大量特征的信用数据集是必需的。本文提出了一种基于粗糙集和分散搜索的特征选择方法,即RSFS。在RSFS中,条件熵被视为搜索最优解的启发式方法。在UCI数据库中选择了两个信用数据集,以证明RSFS的竞争性能包括三个信用模型,包括神经网络模型,J48决策树和Logistic回归。实验结果表明,与基本分类方法相比,RSFS在节省计算成本和提高分类精度方面具有优异的性能。

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