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Unsupervised Insurance Fraud Prediction Based on Anomaly Detector Ensembles

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  • Alexander Vosseler

    (Allianz Global Corporate & Specialty SE (AGCS), 85774 Unterföhring, Germany)

Abstract

The detection of anomalous data patterns is one of the most prominent machine learning use cases in industrial applications. Unfortunately very often there are no ground truth labels available and therefore it is good practice to combine different unsupervised base learners with the hope to improve the overall predictive quality. Here one of the challenges is to combine base learners that are accurate and divers at the same time, where another challenge is to enable model explainability. In this paper we present BHAD, a fast unsupervised Bayesian histogram anomaly detector, which scales linearly with the sample size and the number of attributes and is shown to have very competitive accuracy compared to other analyzed anomaly detectors. For the problem of model explainability in unsupervised outlier ensembles we introduce a generic model explanation approach using a supervised surrogate model. For the problem of ensemble construction we propose a greedy model selection approach using the mutual information of two score distributions as a similarity measure. Finally we give a detailed description of a real fraud detection application from the corporate insurance domain using an outlier ensemble, we share various feature engineering ideas as well as discuss practical challenges.

Suggested Citation

  • Alexander Vosseler, 2022. "Unsupervised Insurance Fraud Prediction Based on Anomaly Detector Ensembles," Risks, MDPI, vol. 10(7), pages 1-20, June.
  • Handle: RePEc:gam:jrisks:v:10:y:2022:i:7:p:132-:d:844466
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    References listed on IDEAS

    as
    1. Vosseler, Alexander, 2016. "Bayesian model selection for unit root testing with multiple structural breaks," Computational Statistics & Data Analysis, Elsevier, vol. 100(C), pages 616-630.
    2. Chamal Gomes & Zhuo Jin & Hailiang Yang, 2021. "Insurance fraud detection with unsupervised deep learning," Journal of Risk & Insurance, The American Risk and Insurance Association, vol. 88(3), pages 591-624, September.
    3. Babak Zafari & Tahir Ekin, 2019. "Topic modelling for medical prescription fraud and abuse detection," Journal of the Royal Statistical Society Series C, Royal Statistical Society, vol. 68(3), pages 751-769, April.
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