Analyzing Credit Card Fraud Detection based on Machine Learning Models

Raghad Almutairi, Abhishek Godavarthi, Arthi Reddy Kotha, Ebrima N. Ceesay
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引用次数: 1

Abstract

Credit card use is not always the best way to use for payments, but the most demonstrable payment mode is through the credit card for both offline as well as for online payments, which can result in deficit of funds. As the online shopping is booming it helps in rendering the cashless payment modes. It can be used at shopping’s, paying rent, paying utilities bill, internet bill, travel and transportation, entertainment, food. Using for all these things there is a chance of fraud transactions for a credit card, hence there is more risk. There are many types of fraudulent detections most of the banks and institutions are preferring fraud detection applications.it has become very hard to find out the fraud detections, After the transaction is done there is a chance of detecting fraudulent transactions in the manual business processing system. In real time the bunco transactions are done with real transactions, but it seems not to be sufficient for detecting [1]. Machine learning and data science both are playing a very important role in identifying the fraud detections. This study uses data science and machine learning for detecting the fraud detection to demonstrate various modellings. The problem enables the transactions of the previously done transaction data.
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基于机器学习模型的信用卡欺诈检测分析
使用信用卡并不总是最好的支付方式,但最明显的支付方式是通过信用卡进行离线和在线支付,这可能导致资金赤字。随着网上购物的蓬勃发展,它有助于实现无现金支付模式。它可以用于购物,支付租金,支付水电费,互联网账单,旅游和交通,娱乐,食品。使用所有这些东西都有可能发生信用卡欺诈交易,因此风险更大。有许多类型的欺诈检测,大多数银行和机构更喜欢欺诈检测应用程序。在交易完成后,在人工业务处理系统中有可能发现欺诈交易,因此很难发现欺诈检测。在实时中,bunco交易是用真实的交易完成的,但似乎不足以检测[1]。机器学习和数据科学在识别欺诈检测方面都发挥着非常重要的作用。本研究使用数据科学和机器学习来检测欺诈检测,以演示各种模型。该问题支持先前完成的事务数据的事务。
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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