Credit Card Fraud Detection in the Nigerian Financial Sector: A Comparison of Unsupervised TensorFlow-Based Anomaly Detection Techniques, Autoencoders and PCA Algorithm
Jennifer Onyeama

TL;DR
This paper compares unsupervised TensorFlow-based autoencoders and PCA algorithms for credit card fraud detection in Nigeria, demonstrating autoencoders' superior performance in analyzing complex transaction data.
Contribution
It provides a comparative analysis of autoencoders and PCA for fraud detection, highlighting the effectiveness of autoencoders in Nigerian financial data.
Findings
Autoencoders outperform PCA in fraud detection accuracy.
Autoencoders handle complex datasets more reliably.
Minimal mislabeling with autoencoders enhances detection.
Abstract
Credit card fraud is a major cause of national concern in the Nigerian financial sector, affecting hundreds of transactions per second and impacting international ecommerce negatively. Despite the rapid spread and adoption of online marketing, millions of Nigerians are prevented from transacting in several countries with local credit cards due to bans and policies directed at restricting credit card fraud. Presently, a myriad of technologies exist to detect fraudulent transactions, a few of which are adopted by Nigerian financial institutions to proactively manage the situation. Fraud detection allows institutions to restrict offenders from networks and with a centralized banking identity management system, such as the Bank Verification Number used by the Central Bank of Nigeria, offenders who may have stolen other identities can be backtraced and their bank accounts frozen. This paper…
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Taxonomy
TopicsImbalanced Data Classification Techniques · Financial Distress and Bankruptcy Prediction · Cybercrime and Law Enforcement Studies
