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Relevance vector machine based infinite decision agent ensemble learning for credit risk analysis

机译:基于关联向量机的无限决策Agent集成学习的信用风险分析

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摘要

In this paper, a relevance vector machine based infinite decision agent ensemble learning (RVM_(Ideal)) system is proposed for the robust credit risk analysis. In the first level of our model, we adopt soft margin boosting to overcome overfitting. In the second level, the RVM algorithm is revised for boosting so that different RVM agents can be generated from the updated instance space of the data. In the third level, the perceptron Kernel is employed in RVM to simulate infinite subagents. Our system RVM_(Ideal) also shares some good properties, such as good generalization performance, immunity to overfitting and predicting the distance to default. According to the experimental results, our proposed system can achieve better performance in term of sensitivity, specificity and overall accuracy.
机译:本文针对鲁棒的信用风险分析,提出了一种基于相关向量机的无限决策代理集成学习(RVM_(Ideal))系统。在模型的第一级,我们采用软边距提升来克服过度拟合。在第二级中,修改了RVM算法以进行增强,以便可以从更新的数据实例空间中生成不同的RVM代理。在第三级中,感知器内核在RVM中用于模拟无限子代理。我们的系统RVM_(Ideal)还具有一些良好的属性,例如良好的泛化性能,抗过度拟合性和预测默认距离。根据实验结果,我们提出的系统可以在灵敏度,特异性和整体准确性方面达到更好的性能。

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