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MEM: a new mixed ensemble model for identifying frauds

机译:MEM:一种用于识别欺诈的新混合集合模型

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摘要

In the social security system, there still exist wilful insurance frauds. In this paper, to address the insufficient stability and randomness of the traditional insurance fraud evaluation model, we propose a new classifier called mixed ensemble model (MEM). Based on the principle of ensemble learning, MEM combines several different individual learners and uses Q statistical methods to evaluate diversity. MEM has been tested on two fraud related datasets to compare with three state-of-the-art classifiers: neural network, naive Bayes and logistic regression. The experimental results show that MEM performs better than the other three classifiers in both datasets under the four measures: accuracy, recall, F-value and kappa. MEM can be a useful method for the detection of social insurance fraud.
机译:在社会保障制度中,仍然存在故意保险欺诈。 在本文中,为了解决传统保险欺诈评估模型的不足稳定性和随机性,我们提出了一种称为混合集合模型(MEM)的新分类器。 基于集合学习的原则,MEM结合了几个不同的个别学习者,并使用Q统计方法来评估多样性。 已经在两个欺诈相关数据集上进行了测试,以与三个最先进的分类器进行比较:神经网络,天真贝叶斯和逻辑回归。 实验结果表明,MEM在四个措施下的两个数据集中的其他三个分类器更好:准确性,召回,F值和κ。 MEM可以是检测社会保险欺诈的有用方法。

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