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A Study of Feature Selection and Dimensionality Reduction Methods for Classification-Based Phishing Detection System

机译:基于分类的网络钓鱼检测系统特征选择和维数减少方法的研究

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摘要

Phishing was introduced in 1996, and now phishing is the biggest cybercrime challenge. Phishing is an abstract way to deceive users over the internet. Purpose of phishers is to extract the sensitive information of the user. Researchers have been working on solutions of phishing problem, but the parallel evolution of cybercrime techniques have made it a tough nut to crack. Recently, machine learning-based solutions are widely adopted to tackle the menace of phishing. This survey paper studies various feature selection method and dimensionality reduction methods and sees how they perform with machine learning-based classifier. The selection of features is vital for developing a good performance machine learning model. This work is comparing three broad categories of feature selection methods, namely filter, wrapper, and embedded feature selection methods, to reduce the dimensionality of data. The effectiveness of these methods has been assessed on several machine learning classifiers using k-fold cross-validation score, accuracy, precision, recall, and time.
机译:网络钓鱼于1996年推出,现在网络钓鱼是最大的网络犯罪挑战。网络钓鱼是一种在互联网上欺骗用户的抽象方式。 phishers的目的是提取用户的敏感信息。研究人员一直在研究网络钓鱼问题的解决方案,但网络犯罪技术的平行演变使其成为一种坚韧的裂缝。最近,基于机器学习的解决方案被广泛采用来解决网络钓鱼的威胁。该调查纸研究了各种特征选择方法和维度减少方法,并看到它们如何执行基于机器学习的分类器。选择功能对于开发良好的性能机器学习模型至关重要。这项工作正在比较三类广泛的特征选择方法,即滤波器,包装器和嵌入的特征选择方法,以降低数据的维度。这些方法的有效性已经在几种机器学习分类器上进行了评估,使用k折叠交叉验证得分,准确性,精度,召回和时间。

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