CREDIT CARD FRAUD DETECTION USING RANDOM FOREST ALGORITHM

Prof. Teena Varma, Mahesh Poojari, J. Joseph, Ainsley Cardozo
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引用次数: 1

Abstract

Credit card fraud avoidance has been the most popular problem in the developed world. In this case, credit card fraud is identified by fraudulent transactions. Since e-commerce sites are becoming more popular, credit card fraud is becoming more common. When a credit card is stolen it is used for dishonest reasons, a fraudster uses the credit card information for his own purposes, and it is called credit card theft. In order to track online fraud transactions, the new technology employs a variety of methods. To increase the consistency of the proposed scheme, we used a random forest algorithm to find suspicious transactions. It is built on supervise learning algorithm, which classifies the dataset using decision trees. After the dataset has been categorized, a confusion matrix is established. The confusion matrix is used to test the Random Forest Algorithm's accuracy. Keywords— Credit Card, Fraud Detection, Random Forest, Classification technique, Transactions.
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基于随机森林算法的信用卡欺诈检测
在发达国家,避免信用卡欺诈一直是最普遍的问题。在这种情况下,通过欺诈性交易来识别信用卡欺诈。由于电子商务网站越来越受欢迎,信用卡欺诈也变得越来越普遍。当信用卡被盗时,它被用于不诚实的原因,欺诈者将信用卡信息用于自己的目的,这被称为信用卡盗窃。为了追踪在线欺诈交易,这项新技术采用了多种方法。为了提高方案的一致性,我们使用随机森林算法来发现可疑交易。它建立在监督学习算法的基础上,利用决策树对数据集进行分类。在对数据集进行分类后,建立混淆矩阵。用混淆矩阵来检验随机森林算法的准确率。关键词:信用卡,欺诈检测,随机森林,分类技术,交易。
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