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Phishing Hybrid Feature-Based Classifier by Using Recursive Features Subset Selection and Machine Learning Algorithms

机译:通过使用递归特征子集选择和机器学习算法,通过使用递归特征基于混合特征的分类器

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Machine learning classifiers enriched the anti-phishing schemes with effective phishing classification models. However, they were constrained by their deficiency of inductive factors like learning on big and imbalanced data, deploying rich sets of features, and learning classifiers actively. That resulted in heavyweight phishing classifiers with massive misclassifications in real-time phishing detection. To diminish this deficiency, this paper proposed a new Phishing Hybrid Feature-Based Classifier (PHFBC) which hybridized two machine learning algorithms (Na?ve Base) and (Decision Tree) with a statistical criterion of Phish Ratio. In conjunction, a Recursive Feature Subset Selection Algorithm (RFSSA) was also proposed to characterize phishing holistically with a robust selected subset of features. Outcomes of performance assessment via simulations, real-time validation, and comparative analysis demonstrated that PHFBC was highly distinctive among its competitors in terms of classification accuracy and minimal misclassification of novel phishes on the Web.
机译:机器学习分类器丰富了具有有效网络钓鱼分类模型的防护钓鱼计划。然而,它们受到他们对大型和不平衡数据的学习等归纳因素的限制,可以积极地部署丰富的功能和学习分类器。这导致重量级网络钓鱼分类器,具有大规模错误分类在实时网络钓鱼检测中。为了减少这种缺陷,本文提出了一种新的网络钓鱼混合特征基分类器(PHFBC),其涉及两种机器学习算法(NAαVE基础)和(决定树)的统计学比率。结合,还提出了一种递归特征子集选择算法(RFSSA),以通过稳健的选择特征来对网络培训。通过模拟,实时验证和比较分析表现出性能评估结果表明,在竞争对手方面,PHFBC在竞争对手方面具有高度独特的竞争对手,在对网上的小型手术中的最小错误分类。

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