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Certificate of Completion

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THIS ACKNOWLEDGES THAT

HAS COMPLETED THE FALL 2025 DATA SCIENCE BOOT CAMP

Noimot Bakare Ayoub

Roman Holowinsky, PhD

NOVEMBER 13, 2025

DIRECTOR

DATE

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TEAM

Fast Fraud Screening: Using Lightweight Models to Flag Risk Before Deep Analysis

Noimot Bakare Ayoub, Brandon Owens, Cyril Cordor, Abdullah Ahmed

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Question:
Can we build a lightweight surrogate model with high recall of Fraud transactions that can be used as a preprocessing filter before a more complex model/human checks for Fraud?

Problem:
Financial fraud is a growing challenge that costs financial institutions worldwide billions of dollars annually.

Project proposal: Build a lightweight surrogate model that screens transactions for potential fraud, and then sends those transactions through more intensive models/human analysts for verification. The goal is to reduce computational load, speed detection, and focus resources.

Data:
JPMorgan Chase Payment Data (synthetically generated)
1.49 million transactions (electronic transfers, bill payments, deposits, withdrawals) spanning approximately 50 years.

Approach:
We engineer both transactional and network features. Network features track fraud communities and identify proximity to fraud.

Models: Logistic Regression, XGBoost,

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github URL

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