FRAUD DETECTION IN UPI TRANSACTIONS USING ML

J. Kavitha, G. Indira, A. Anil kumar, A. Shrinita, D. Bappan
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Abstract

Significant obstacles to financial security have arisen as a result of the quick uptake of Unified Payments Interface (UPI) for online transactions and a commensurate rise in fraudulent activity. This paper suggests a novel fraud detection method that makes use of cutting-edge machine learning (ML) algorithms to address this urgent issue. It focuses on integrating a Hidden Markov Model (HMM) into the UPI transaction process. In order to enable the system to identify departures from these learnt behaviors as possibly fraudulent, the HMM is trained to predict the typical transaction patterns for particular cardholders. The suggested system uses a variety of contemporary approaches, such as Kmeans Clustering, Auto Encoder, Local Outlier Factor, and artificial neural networks, to improve algorithmic diversity and flexibility to changing fraud patterns. In addition to addressing issues like test data creation for training and validation, the system emphasizes a heuristic approach to solving high-complexity computational problems, guaranteeing efficacy in a variety of settings. This study, which is positioned as a proactive and adaptable solution, emphasizes how crucial it is to stop UPI fraud and provides a thorough foundation for reliable fraud detection in the ever-changing world of online transactions.
使用毫微处理器检测 UPI 交易中的欺诈行为
由于用于在线交易的统一支付接口(UPI)的快速普及以及欺诈活动的相应增加,金融安全出现了重大障碍。本文提出了一种新型欺诈检测方法,利用最先进的机器学习(ML)算法来解决这一紧迫问题。其重点是将隐马尔可夫模型(HMM)集成到 UPI 交易流程中。为了使系统能够将偏离这些学习行为的行为识别为可能的欺诈行为,对 HMM 进行了训练,以预测特定持卡人的典型交易模式。建议的系统采用了多种现代方法,如均值聚类、自动编码器、局部离群因子和人工神经网络,以提高算法的多样性和灵活性,从而适应不断变化的欺诈模式。除了解决为训练和验证创建测试数据等问题外,该系统还强调采用启发式方法解决高复杂度计算问题,保证在各种环境下都能发挥功效。这项研究被定位为一种积极主动、适应性强的解决方案,它强调了阻止 UPI 欺诈的重要性,并为在瞬息万变的在线交易世界中进行可靠的欺诈检测奠定了坚实的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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