Classification of Customer Actions on Digital Money Transactions on PaySim Mobile Money Simulator using Probabilistic Neural Network (PNN) Algorithm

S. Sa'adah, Melati Suci Pratiwi
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引用次数: 1

Abstract

Development of technology have influenced all aspect, especially in financial sector in this pandemic situation, where most people tend to use digital money to conduct daily financial transactions. In one side, there is security point that need to be concern much. Like several disadvantages using credit cards by undue owners, social engineering, and transactions to commit fraud. In this paper, PaySim Mobile Money Simulator data is used with a machine learning algorithm called probabilistic neural network (PNN) to classify whether the customer's actions are normal or fraudulent actions. This PNN approach combined using binary classification to prevent fraudulent actions in transactions that have been or are being used by customers. And the result indicated that this system able to classify class 0 (as a normal class customer) and 1 (as a fraudulent class customer). Based on this result, maybe it would help many sectors that involved as a tool to classify a genuine customer. Especially in this pandemic covid-19, the fraud needs to detect often, to mitigate the fraud early.
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基于概率神经网络(PNN)算法的PaySim移动货币模拟器数字货币交易客户行为分类
技术的发展影响了各个方面,特别是在疫情下的金融部门,大多数人倾向于使用数字货币进行日常金融交易。一方面,有安全问题需要多加关注。像一些缺点使用信用卡不正当的所有者,社会工程,和交易进行欺诈。在本文中,PaySim移动货币模拟器数据与一种称为概率神经网络(PNN)的机器学习算法一起使用,以分类客户的行为是正常行为还是欺诈行为。这种PNN方法结合了二元分类,以防止客户已经使用或正在使用的交易中的欺诈行为。结果表明,该系统能够对0类(正常类客户)和1类(欺诈类客户)进行分类。基于这个结果,也许它可以作为一种工具帮助许多相关部门对真正的客户进行分类。特别是在本次covid-19大流行中,需要经常发现欺诈行为,以便及早减轻欺诈行为。
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