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Two-Stage Automobile Insurance Fraud Detection by Using Optimized Fuzzy C-Means Clustering and Supervised Learning

机译:通过使用优化的模糊C-MERIAL聚类和监督学习,两阶段汽车保险欺诈检测

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摘要

A novel two-stage automobile insurance fraud detection system is proposed that initially extracts a test set from the original imbalanced insurance dataset. A genetic algorithm based optimized fuzzy c-means clustering is then applied on the remaining data set for undersampling the majority samples by eliminating the outliers among them. Thereafter, the detection of the fraudulent claims occurs in two stages. In the first stage, each insurance record is passed to the clustering module that identifies the claim as genuine, malicious, or suspicious. The genuine and malicious samples are removed and only the suspicious instances are further scrutinized in the second stage by four trained supervised classifiers − Decision Tree, Support Vector Machine, Group Method for Data Handling and Multi-Layer Perceptron individually for final decision making. Extensive experiments and comparative analysis with another recent approach using a real-world automobile insurance dataset justifies the effectiveness of the proposed system.
机译:提出了一种新型的两级汽车保险欺诈检测系统,最初提取来自原始不平衡保险数据集的测试集。然后将基于遗传算法的优化模糊C-MEAREL聚类应用于剩余的数据集,用于通过消除它们之间的异常值来提高大多数样本。此后,在两个阶段发生欺诈性主张的检测。在第一阶段,每个保险记录都传递给群集模块,该模块将索赔识别为真实,恶意或可疑。删除了真正的和恶意样本,只有四个训练的监督分类器 - 决策树,支持向量机,组方法以及用于最终决策的数据处理和多层感知和多层感知程序的第二阶段,只能仔细审查。使用现实世界汽车保险数据集进行了广泛的实验和比较分析,并使用现实世界汽车保险数据集证明了所提出的系统的有效性。

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