Adaptive Financial Fraud Detection in Imbalanced Data with Time-Varying Poisson Processes

  • Houssou R
  • Bovay J
  • Robert S
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Abstract

This paper discusses financial fraud detection in imbalanced dataset using homogeneous and non-homogeneous Poisson processes. The probability of predicting fraud on the financial transaction is derived. Applying our methodology to the financial dataset shows a better predicting power than a baseline approach, especially in the case of higher imbalanced data.

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APA

Houssou, R., Bovay, J., & Robert, S. (2019). Adaptive Financial Fraud Detection in Imbalanced Data with Time-Varying Poisson Processes. Journal of Financial Risk Management, 08(04), 286–304. https://doi.org/10.4236/jfrm.2019.84020

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