Litcius/Paper detail

Predicting automobile insurance fraud using classical and machine learning models

Shareh-Zulhelmi Shareh Nordin, Yap Bee Wah, Kok Haur Ng, Asmawi Hashim, Norimah Rambeli, Norasibah Abdul Jalil

2023International Journal of Power Electronics and Drive Systems/International Journal of Electrical and Computer Engineering13 citationsDOIOpen Access PDF

Abstract

Insurance fraud claims have become a major problem in the insurance industry. Several investigations have been carried out to eliminate negative impacts on the insurance industry as this immoral act has caused the loss of billions of dollars. In this paper, a comparative study was carried out to assess the performance of various classification models, namely logistic regression, neural network (NN), support vector machine (SVM), tree augmented naïve Bayes (NB), decision tree (DT), random forest (RF) and AdaBoost with different model settings for predicting automobile insurance fraud claims. Results reveal that the tree augmented NB outperformed other models based on several performance metrics with accuracy (79.35%), sensitivity (44.70%), misclassification rate (20.65%), area under curve (0.81) and Gini (0.62). In addition, the result shows that the AdaBoost algorithm can improve the classification performance of the decision tree. These findings are useful for insurance professionals to identify potential insurance fraud claim cases.

Topics & Concepts

Automobile insuranceDecision treeAdaBoostSupport vector machineNaive Bayes classifierComputer scienceRandom forestMachine learningInsurance fraudLogistic regressionArtificial neural networkArtificial intelligenceBayes' theoremTree (set theory)Data miningActuarial scienceBusinessMathematicsBayesian probabilityMathematical analysisImbalanced Data Classification Techniques