使用机器学习的信用卡欺诈检测

Sagar Yeruva, Machavolu Sri Harshitha, Miriyala Kavya, Murakonda Sai Deepa Sree, Tumpudi Sri Sahithi
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引用次数: 0

摘要

不断发展的技术使人类的生活更容易,挑战也越来越多。在数字化时代,网上支付已经成为我们生活中不可或缺的一部分。信用卡支付系统使交易变得无麻烦。这导致了电子商务评估。交易的数字化导致了新的欺诈和网络攻击形式,可能影响个人和组织。这使得黑客可以使用不同的方案来窃取持卡人的详细信息。信用卡公司必须尽早识别这些欺诈性交易,以在利益相关者中保持信誉。事实证明,传统的欺诈检测方法在实时识别和防止这些欺诈活动和网络攻击方面是无效的。本文讨论了实时预测欺诈交易的各种机器学习算法。利用数据科学和机器学习技术解决欺诈活动,这些技术具有强大的处理能力和管理大量数据集的能力。该模型是在大量数据集上训练的。本文强调了各种机器学习算法在输入上的性能比较。通过制表和比较,对几种机器学习算法的精度和效率进行了测量和分析。经过训练的模型与一个网站相结合,可以将金融交易分类为合法交易或欺诈交易。近年来,利用先进的机器学习算法,信用卡欺诈检测系统变得更加精细和准确。因此,金融机构和客户受到保护,免受此类欺诈活动的侵害,从而增加了对使用信用卡支付的信任和信心。
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Credit Card Fraud Detection using Machine Learning
Evolving technologies make human life easier with increasing challenges. Online payments have become an integral part of our lives in the era of digitalization. The credit card payment system has made transactions hassle-free. This led to E-Commerce appraisal. Digitalization of transactions has given rise to new forms of fraud and cyberattacks that can affect individuals and organizations. This had set hackers at a great deal to steal the cardholder details using different schemes. Credit card companies must recognize these fraudulent transactions at the earliest to retain credibility among the stakeholders. Traditional methods of fraud detection have proven ineffective in identifying and preventing these fraudulent activities and cyberattacks in real time. This paper discusses various Machine Learning algorithms that predict fraudulent transactions in real-time. Fraudulent activities are solved using data science and machine learning techniques with substantial processing power and the capacity to manage massive datasets. The model is trained on large volumes of the dataset. This paper emphasizes comparison of various machine learning algorithms' performance over the input. The accuracy and efficiency of several machine learning algorithms are measured and analyzed through tabulation and comparison. The trained model is integrated with a website to categorize financial transactions as either legitimate or fraudulent. On utilizing advanced machine learning algorithms, credit card fraud detection systems have become more refined and accurate in recent years. As a result, financial organizations and customers are protected against such fraudulent activities, leading to increased trust and confidence in utilization credit card payments.
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