Detecting Advance Fee Fraud Using NLP Bag of Word Model

M. Hamisu, Ali Mansour
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引用次数: 4

Abstract

Advance Fee Fraud (AFF) is a form of Internet fraud prevalent within the Cybercrimes domain in literature. Evidence shows that huge financial assets are stolen from the global economy as a result of AFF. Consequently, this paper presents a fraudulent email classifier (FEC) that detects and classifies an email as fraudulent or non-fraudulent using Natural Language Process (NLP) model referred to as Bag-of-Words (BoW). The classifier is designed and trained to detect and classify AFF that originate from known sources using Nigeria as a Case study. Dataset is obtained and used for the training while testing the classifier logs. Experimentally, the classifier was trained using various machine learning algorithms with BoW generated as predictors. By selecting the best algorithms, the classifier was tested and found to perform satisfactorily.
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基于词模型的NLP袋检测预付费欺诈
预收费欺诈(AFF)是文学作品中网络犯罪领域中普遍存在的一种网络欺诈形式。有证据表明,由于AFF,大量金融资产从全球经济中被盗。因此,本文提出了一种欺诈性电子邮件分类器(FEC),该分类器使用被称为词袋(BoW)的自然语言过程(NLP)模型检测并分类电子邮件为欺诈性或非欺诈性。分类器的设计和训练是为了检测和分类来自已知来源的AFF,并使用尼日利亚作为案例研究。在测试分类器日志的同时,获取数据集用于训练。实验中,使用各种机器学习算法训练分类器,生成BoW作为预测器。通过选择最佳算法,对分类器进行了测试,结果令人满意。
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