验证phishmon:一个动态网页分类框架

J. Tomaselli, Austin Willoughby, Jorge Vargas Amezcua, Emma Delehanty, Katherine Floyd, Damien Wright, M. Lammers, R. Vetter
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引用次数: 0

摘要

网络钓鱼攻击是网络安全经理工作的祸害。为了寻找应对这一趋势的解决方案,本文检查并验证了Phishmon的有效性,Phishmon是一种用于审查网页的机器学习框架,它依赖于网页结构的技术属性进行分类。更具体地说,原始论文中提到的四种机器学习算法中的每一种都应用于Phishmon的创建者使用的数据集的一部分,以验证和确认他们的结果。本文从两个方面展开了作者的原著。首先,Phishmon框架应用于另外两个机器学习模型,以便与第一组模型进行比较。进一步探讨了降维和算法参数优化对Phishmon框架精度的影响。我们的发现建议改进Phishmon框架的实现。也就是说,当模型形成时,缩小数据集以包括相同数量的网络钓鱼和良性网页,似乎可以平衡网络钓鱼和良性网页的准确率。此外,删除相对重要值非常低的特征可以节省时间和处理能力,同时保留绝大多数模型的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Verifying phishmon: a framework for dynamic webpage classification
Phishing attacks are the scourge of the network security manager's job. Looking for a solution to counter this trend, this paper examines and verifies the efficacy of Phishmon, a machine learning framework for scrutinizing webpages that relies on technical attributes of the webpage's structure for classification. More specifically, each of the four machine learning algorithms mentioned in the original paper are applied to a portion of the data set used by Phishmon's creators in order to verify and confirm their results. This paper expands the author's original work in two ways. First, the Phishmon framework is applied to two additional machine learning models for comparison to the first group. Furthermore, dimension reduction and algorithm parameter optimization are explored to determine their effects on the Phishmon framework's accuracy. Our findings suggest improvements to the Phishmon framework's implementation. Namely, downsizing the dataset to include an equal number of phishing and benign webpages as the model is formed appears to balance the accuracy rates achieved for both phishing and benign webpages. Furthermore, removing features with very low relative importance values may save time and processing power while preserving a vast majority of the model's information.
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