Prevention Service for Fraudulent and Non Fraudulent Payments using Online Payment
DOI:
https://doi.org/10.31033/ijemr.13.6.15Keywords:
Fraud Detection, Fully Connected Neural Network, XgboostAbstract
In the era of rapid Internet technological advancement, the scale of online transactions is incessantly expanding. Concurrently, the issue of network transaction fraud has attained heightened significance. In contrast to credit card transactions, online transactions exhibit characteristics such as low cost, extensive coverage, and high frequency, rendering fraud detection a notably intricate challenge. This paper addresses the complexities associated with fraud detection in online transactions by proposing two distinct algorithms: one based on a Fully Connected Neural Network and the other utilizing XGBoost. These algorithms demonstrate commendable performance, with AUC values reaching 0.912 and 0.969, respectively.
Furthermore, to operationalize these advancements, an interactive online transaction fraud detection system has been meticulously designed based on the XGBoost model. This system autonomously analyzes uploaded transaction data and promptly delivers fraud detection results to users. The integration of advanced algorithms and the development of a user-friendly system underscore the commitment to addressing the nuanced challenges posed by online transaction fraud in an efficient and effective manner.
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Copyright (c) 2023 Adwani Vaishali Tulsi, Prof. Dinesh D. Patil
This work is licensed under a Creative Commons Attribution 4.0 International License.