Published June 29, 2025 | Version v1
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ONLINE PAYMENT FRAUD DETECTION USING MACHINE LEARNING

Description

Online payment fraud has become a critical challenge in the digital economy, leading to substantial financial losses
and eroding consumer trust. The rise of web surfing and online shopping, so came the use of credit cards for online
transactions, as did the prevalence of online financial fraud. This study focuses on developing a machine learningbased system to detect and prevent fraudulent transactions in online payment platforms. The proposed solution
involves data preprocessing, feature engineering, and the selection of appropriate machine learning models such as
Logistic Regression, XG Boost Classifier, Random Forests, and SVC. Given the imbalanced nature of the dataset,
where fraudulent transactions are rare, advanced techniques are employed to enhance model accuracy. The
evaluation metrics include accuracy, confusion matrix. The system is designed for real-time deployment, offering a
robust mechanism to reduce fraudulent activities and improve the security and reliability of online payment systems.

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