Random Rough Subspace Based Neural Network Ensemble for Insurance Fraud Detection

Computational Sciences and Optimization(2011)

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摘要
In this paper, a random rough subspace based neural network ensemble method is proposed for insurance fraud detection. In this method, rough set reduction is firstly employed to generate a set of reductions which can keep the consistency of data information. Secondly, the reductions are randomly selected to construct a subset of reductions. Thirdly, each of the selected reductions is used to train a neural network classifier based on the insurance data. Finally, the trained neural network classifiers are combined using ensemble strategies. For validation, a real automobile insurance case is used to test the effectiveness and efficiency of our proposed method with two popular evaluation criteria including the percentage correctly classified (PCC) and the receive operating characteristic (ROC) curve. The experimental results show that our proposed model outperforms single classifier and other models used in comparison. The findings of this study reseal that the random rough subspace based neural network ensemble method can provide a faster and more accurate way to find suspicious insurance claims, and it is a promising tool for insurance fraud detection.
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关键词
insurance data processing,rough set theory,data reduction,real automobile insurance,percentage correctly classified,ensemble strategy,insurance data,rough set,pattern classification,ensemble,receive operating characteristic,insurance fraud detection,neural network ensemble method,suspicious insurance claim,fraud,random rough subspace,rough set reduction,neural network,real automobile insurance case,trained neural network classifier,neural network classifier,neural nets,neural network ensemble,artificial neural networks,bayesian methods,roc curve,receiver operator characteristic,testing,boosting,insurance
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