期刊名称:International Journal of Computer Information Systems and Industrial Management Applications
印刷版ISSN:2150-7988
电子版ISSN:2150-7988
出版年度:2016
卷号:8
页码:257-265
出版社:Machine Intelligence Research Labs (MIR Labs)
摘要:This paper is a continuation of previous paper where the imbalance dataset problem was solved by applying a proposed novel partitioning-undersampling technique. Then a proposed innovative Insurance Fraud Detection (IFD) models were designed using base-classifiers; Decision Tree, Support Vector Machine and Artificial Neural Network. This paper proposed an innovative insurance fraud detection models by applying ensemble combining classifiers on IFD models designed previously using base-classifiers. Throughout the paper, ten-fold cross validation method of testing is used. Its originality lies in the use of several ensembles combining classifier and comparing between them for choosingthe best model. Results from a publicly available automobile insurance fraud detection dataset demonstrate that DTIFD performs slightly better than all proposed models, ensemble combining classifier designed IFD models with high recall but still DTIFD model was the best. The proposed models were applied on another imbalance datasets and compared. Empirical results illustrate that the proposed models gave better results.
关键词:Insurance fraud detection; imbalanced data; ; Voting; Stacking and Grading