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A Novel Ensemble Credit Scoring Model Based on Extreme Learning Machine and Generalized Fuzzy Soft Sets

机译:基于极端学习机和广义模糊软套的新型集合信用评分模型

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This paper mainly discusses the hybrid application of ensemble learning, classification, and feature selection (FS) algorithms simultaneously based on training data balancing for helping the proposed credit scoring model perform more effectively, which comprises three major stages. Firstly, it conducts preprocessing for collected credit data. Then, an efficient feature selection algorithm based on adaptive elastic net is employed to reduce the weakly related or uncorrelated variables to get high-quality training data. Thirdly, a novel ensemble strategy is proposed to make the imbalanced training data set balanced for each extreme learning machine (ELM) classifier. Finally, a new weighting method for single ELM classifiers in the ensemble model is established with respect to their classification accuracy based on generalized fuzzy soft sets (GFSS) theory. A novel cosine-based distance measurement algorithm of GFSS is also proposed to calculate the weights of each ELM classifier. To confirm the efficiency of the proposed ensemble credit scoring model, we implemented experiments with real-world credit data sets for comparison. The process of analysis, outcomes, and mathematical tests proved that the proposed model is capable of improving the effectiveness of classification in average accuracy, area under the curve (AUC), H-measure, and Brier’s score compared to all other single classifiers and ensemble approaches.
机译:本文主要讨论了集合学习,分类和特征选择(FS)算法的混合应用,同时基于培训数据平衡,帮助提出的信用评分模型更有效地执行,包括三个主要阶段。首先,它对收集的信用数据进行预处理。然后,采用基于自适应弹性网的有效特征选择算法来减少弱相关或不相关的变量以获得高质量的训练数据。第三,提出了一种新的集合策略,使每个极端学习机(ELM)分类器平衡的不平衡培训数据集。最后,基于广义模糊软件(GFSS)理论,建立了集合模型中单个ELM分类器的新加权方法。还提出了一种基于GFSS的基于余弦的距离测量算法来计算每个ELM分类器的权重。为了确认建议的集合信用评分模型的效率,我们利用实际信用数据集进行了实验进行比较。分析,结果和数学测试的过程证明,与所有其他单一分类器和集合相比,所提出的模型能够提高平均准确性,H尺寸和BRIER分数的平均精度的效果方法。

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