基于逻辑回归和合成少数过采样技术(SMOTE)方法的信用卡欺诈检测。

Nrusingha Tripathy, S. Nayak, Julius Femi Godslove, Ibanga Kpereobong Friday, Sasank Sekhar Dalai
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引用次数: 1

摘要

金融欺诈是一个严重的威胁,对金融部门的影响正在扩大。随着数字化和互联网交易的日益发展,信用卡的使用也在不断增长。当今文化中最常见的问题是信用卡诈骗。这种欺诈通常发生在某人使用别人的信用卡信息时。信用卡欺诈检测利用交易数据属性来识别信用卡欺诈,可以节省大量的经济损失,减轻警方的负担。信用卡欺诈的检测有三个难点:数据不均匀、大量不可见变量、选择合适的阈值以提高模型的可靠性。本研究采用修正的Logistic回归(LR)模型来检测信用卡诈骗,以克服上述困难。数据集采样策略、变量选择和所采用的检测方法都对信用卡交易中欺诈检测的有效性有重要影响。本研究检验了朴素贝叶斯、k近邻和逻辑回归在高度偏斜的信用卡欺诈数据上的有效性。逻辑回归技术的准确率将接近0.98%;有了这种准确性,欺诈行为就很容易被发现。LR获得最高分类分数的事实说明了LR对信用卡盗窃的预测有多好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Credit Card Fraud Detection Using Logistic Regression and Synthetic Minority Oversampling Technique (SMOTE) Approach.
Financial fraud is a serious threat that is expanding effects on the financial sector. The use of credit cards is growing as digitization and internet transactions advance daily. The most common issues in today's culture are credit card scams. This kind of fraud typically happens when someone uses someone else's credit card details. Credit card fraud detection uses transaction data attributes to identify credit card fraud, which can save significant financial losses and affluence the burden on the police. The detection of credit card fraud has three difficulties: uneven data, an abundance of unseen variables, and the selection of an appropriate threshold to improve the models' reliability. This study employs a modified Logistic Regression (LR) model to detect credit card fraud in order to get over the preceding difficulties. The dataset sampling strategy, variable choice, and detection methods employed all have a significant impact on the effectiveness of fraud detection in credit card transactions. The effectiveness of naive bayes, k-nearest neighbour, and logistic regression on highly skewed credit card fraud data is examined in this research. The accuracy of the logistic regression technique will be closer to 0.98%; with this accuracy, frauds may be easily detected. The fact that LR receives the highest classifier score illustrates how well LR predicts credit card theft.
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