机器学习中网络钓鱼检测模型的时间弹性

Arvind Abraham, Gilad Gressel, K. Achuthan
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引用次数: 0

摘要

尽管用机器学习对网络钓鱼检测进行了10年的研究,模型的f1得分超过了0.95,但在过去的10年里,网络钓鱼攻击增加了277.51%。在这项工作中,我们从模型漂移的角度检验了网络钓鱼检测模型的效率。即给定一个经过训练的网络钓鱼检测模型,该模型能保持多久的性能。由于互联网和随后的网络钓鱼攻击的性质不断变化,检查和检测模型漂移对于网络钓鱼检测非常重要。众所周知,网络钓鱼url是间歇性变化的,这导致模型在一段时间后变得过时。
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Temporal Resilience of Phishing Detection Models in Machine Learning
Despite 10 years of research into phishing detection with machine learning, with models yielding greater than .95 F1-scores, in the past 10 years there has been a 277.51% increase in phishing attacks. In this work we examine the efficiency of a phishing detection model in terms of model drift. That is given a trained phishing detection model, how long will the model maintain the performance. It is important to examine and detect model drift for phishing detection because of the changing nature of the internet and subsequent phishing attacks. It is known that phishing URLs change intermittently, which causes models to become obsolete after a period of time.
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