使用数据流算法检测恶意URL

K. Adewole, Muiz O. Raheem, M. Abdulraheem, I. D. Oladipo, A. Balogun, Omotola Fatimah Baker
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引用次数: 0

摘要

由于技术和技术设备的进步,数据现在以无限的速度产生,从大量的网络、设备和日常操作中产生,如信用卡交易和移动电话。数据流在不断发展的信息流中需要连续的和实时的连续数据。然而,传统的机器学习方法以批处理学习模型为特征。先验地给出标记的训练数据来训练基于某些机器学习算法的模型。这种技术要求在学习过程之前可以很容易地访问整个训练样本。在这种情况下,由于培训成本高,培训过程主要是离线完成的。因此,传统的批量学习技术存在着严重的缺陷,如对网络钓鱼网站的实时检测可扩展性差。该模型大多需要使用新的训练样本从零开始重新训练。本文介绍了基于选定在线学习器的流算法在检测恶意url中的应用:Hoeffding Tree (HT), Naïve Bayes (NB)和Ozabag。Ozabag算法在大样本数据集的准确率、Kappa和Kappa Temp方面取得了令人满意的结果,而HT和NB算法的预测时间最短,准确率相当,Kappa和Ozabag算法用于实时检测网络钓鱼网站。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Malicious URLs detection using data streaming algorithms
As a result of advancements in technology and technological devices, data is now spawned at an infinite rate, emanating from a vast array of networks, devices, and daily operations like credit card transactions and mobile phones. Datastream entails sequential and real-time continuous data in the inform of evolving stream. However, the traditional machine learning approach is characterized by a batch learning model. Labeled training data are given apriori to train a model based on some machine learning algorithms. This technique necessitates the entire training sample to be readily accessible before the learning process. The training procedure is mainly done offline in this setting due to the high training cost. Consequently, the traditional batch learning technique suffers severe drawbacks, such as poor scalability for real-time phishing websites detection. The model mostly requires re-training from scratch using new training samples. This paper presents the application of streaming algorithms for detecting malicious URLs based on selected online learners: Hoeffding Tree (HT), Naïve Bayes (NB), and Ozabag. Ozabag produced promising results in terms of accuracy, Kappa and Kappa Temp on the dataset with large samples while HT and NB have the least prediction time with comparable accuracy and Kappa with Ozabag algorithm for the real-time detection of phishing websites.
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