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Investigation of the Noise Sensitivity of Machine Learning Algorithms on Credit Card Fraud Detection

机译:对信用卡欺诈检测机器学习算法噪声敏感性的研究

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The misleading of machine learning based credit card fraud detection systems, due to various cyber attacks and information transfer-related distortions, is highly critical for the financial sector and its effects globally. In this study, the noise sensitivity and reliability of the machine learning algorithms on the credit card transactions database, which was balanced by over sampling method, were investigated. For this purpose, the noise generated in different distributions was added from 5% to 100 percent level and applied on different algorithms. Common noise distributions such as Normal, Poisson, Pareto, Exponential, Power and Uniform have been used. Logistic regression, K nearest neighbor, Decision trees, Random Forest, Extreme Gradient Boosting (XGB) and Gradient Boosting (GB) machine learning algorithms have been used in this study. Results were evaluated by complexity matrix and f1 score. The results include evaluation and comparison of classification criteria for each algorithm and noise level for the noise sensitivity study.
机译:由于各种网络攻击和与信息转移相关的扭曲,基于机器学习的信用卡欺诈检测系统的误导对金融部门具有重要意义及其在全球范围内的影响。在本研究中,研究了通过通过采样方法平衡的信用卡交易数据库上的机器学习算法的噪声灵敏度和可靠性。为此目的,在不同分布中产生的噪声从5%到100%的水平加入,并在不同的算法上应用。已经使用了普通噪声分布,例如正常,泊松,帕累托,指数,功率和均匀。在本研究中使用了Logistic回归,K最近邻居,决策树,随机森林,极端梯度升压(XGB)和梯度升压(GB)机器学习算法。结果是通过复杂性矩阵和F1得分评估的结果。结果包括对噪声灵敏度研究的每种算法和噪声水平的分类标准的评估和比较。

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