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Using Sample Selection to Improve Accuracy and Simplicity of Rules Extracted from Neural Networks for Credit Scoring Applications

机译:使用样本选择来提高从神经网络提取的信用评分应用规则的准确性和简洁性

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摘要

In this paper, we present an approach for sample selection using an ensemble of neural networks for credit scoring. The ensemble determines samples that can be considered outliers by checking the classification accuracy of the neural networks on the original training data samples. Those samples that are consistently misclassified by the neural networks in the ensemble are removed from the training dataset. The remaining data samples are then used to train and prune another neural network for rule extraction. Our experimental results on publicly available benchmark credit scoring datasets show that by eliminating the outliers, we obtain neural networks with higher predictive accuracy and simpler in structure compared to the networks that are trained with the original dataset. A rule extraction algorithm is applied to generate comprehensible rules from the neural networks. The extracted rules are more concise than the rules generated from networks that have been trained using the original datasets.
机译:在本文中,我们提出了一种使用神经网络集成进行信用评分的样本选择方法。集合通过检查原始训练数据样本上的神经网络的分类准确性来确定可以视为异常值的样本。从训练数据集中删除那些在集合中始终被神经网络误分类的样本。然后,其余数据样本将用于训练和修剪另一个神经网络以进行规则提取。我们在可公开获得的基准信用评分数据集上的实验结果表明,与使用原始数据集训练的网络相比,通过消除异常值,我们可以获得具有更高预测精度和结构更简单的神经网络。应用规则提取算法从神经网络生成可理解的规则。提取的规则比使用原始数据集训练的网络生成的规则更简洁。

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