Financial Fraud Detection Using Value-At-Risk with Machine Learning in Skewed Data

Authors

  • Bangarayyagari Nalanda Department of Artificial Intelligence and Machine Learning, Dr K V Subba Reddy Institute of Technology, Kurnool, Andhra Pradesh, India Author
  • Nayakallu Sai Vaishnavi Department of Artificial Intelligence and Machine Learning, Dr K V Subba Reddy Institute of Technology, Kurnool, Andhra Pradesh, India Author
  • Peddapothu Siva Mounika Department of Artificial Intelligence and Machine Learning, Dr K V Subba Reddy Institute of Technology, Kurnool, Andhra Pradesh, India Author
  • Chinnapareddy Akanksha Department of Artificial Intelligence and Machine Learning, Dr K V Subba Reddy Institute of Technology, Kurnool, Andhra Pradesh, India Author
  • Avula Bhavitha Department of Artificial Intelligence and Machine Learning, Dr K V Subba Reddy Institute of Technology, Kurnool, Andhra Pradesh, India Author
  • Dr. Dhanaraj Cheelu Department of Artificial Intelligence and Machine Learning, Dr K V Subba Reddy Institute of Technology, Kurnool, Andhra Pradesh, India Author

DOI:

https://doi.org/10.32628/IJSRSET2512310

Keywords:

New Bank Account (NBA) Fraud, Skewed Data Distribution, Value-at-Risk (VaR), Fraud Detection Models, Machine Learning (ML)

Abstract

The significant losses that banks and other financial organizations suffered due to new bank account (NBA) fraud are alarming as the number of online banking service users increases. The inherent skewness and rarity of NBA fraud instances have been a major challenge to the machine learning (ML) models and happen when non-fraud instances outweigh the fraud instances, which leads the ML models to overlook and erroneously consider fraud as non-fraud instances. Such errors can erode the confidence and trust of customers. Existing studies consider fraud patterns instead of potential losses of NBA fraud risk features while addressing the skewness of fraud datasets. The detection of NBA fraud is proposed inthis research within the context of value-at- risk asa risk measure that considers fraud instances asa worst-case scenario. Value-at-risk uses historical simulation to estimate potential losses of risk features and model them as a skewed tail distribution. The risk-return features obtained from value-at-risk were classified using ML on the bank account fraud (BAF) Dataset. The value-at-risk handles the fraud skewness using an adjustable threshold probability range to attach weight to the skewed NBA fraud instances. A novel detectionrate (DT) metric that considers risk fraud features was used to measure the performance of the fraud detection model. An improved fraud detection model is achieved using a K-nearest neighbor with a true positive(TP) rateof0.95 anda DT rateof 0.9406. Under an acceptable loss tolerance in the banking sector, value-at-risk presents an intelligent approach for establishing data- driven criteria for fraud risk management.

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References

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Published

09-05-2025

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Section

Research Articles

How to Cite

[1]
Bangarayyagari Nalanda, Nayakallu Sai Vaishnavi, Peddapothu Siva Mounika, Chinnapareddy Akanksha, Avula Bhavitha, and Dr. Dhanaraj Cheelu, “Financial Fraud Detection Using Value-At-Risk with Machine Learning in Skewed Data”, Int J Sci Res Sci Eng Technol, vol. 12, no. 3, pp. 35–42, May 2025, doi: 10.32628/IJSRSET2512310.

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