Instance-level explanations for fraud detection (poster)

Dennis Collaris, Jack J. van Wijk, Leo M. Vink

Research output: Contribution to conferencePoster

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Abstract

Fraud detection is a difficult problem that can benefit from predictive modeling. However, the verification of a prediction is challenging; for a single insurance policy, the model only provides a prediction score. We present a case study where we reflect on different instance-level model explanation techniques to aid a fraud detection team in their work. To this end, we designed two novel dashboards combining various state-of-the-art explanation techniques. These enable the domain expert to analyze and understand predictions, dramatically speeding up the process of filtering potential fraud cases.
Original languageEnglish
Number of pages1
Publication statusPublished - 19 Mar 2019
EventICT Open 2019 - Gooiland Theater, Hilversum, Netherlands
Duration: 19 Mar 201920 Mar 2019

Conference

ConferenceICT Open 2019
Country/TerritoryNetherlands
CityHilversum
Period19/03/1920/03/19

Keywords

  • Interpretability
  • Explanation
  • Machine learning
  • Sensitivity analysis
  • Local rule extraction
  • instance-level explanation
  • Fraud detection
  • Case study

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  • Instance-level explanations for fraud detection: a case study

    Collaris, D. A. C., Vink, L. M. & van Wijk, J. J., 19 Jun 2018, 2018 ICML Workshop on Human Interpretability in Machine Learning (WHI 2018). p. 28-33 6 p.

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