Using supervised machine learning algorithms to detect suspicious URLs in online social networks

Mohammed Al-Janabi, E. Quincey, Péter András
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引用次数: 35

Abstract

The increasing volume of malicious content in social networks requires automated methods to detect and eliminate such content. This paper describes a supervised machine learning classification model that has been built to detect the distribution of malicious content in online social networks (ONSs). Multisource features have been used to detect social network posts that contain malicious Uniform Resource Locators (URLs). These URLs could direct users to websites that contain malicious content, drive-by download attacks, phishing, spam, and scams. For the data collection stage, the Twitter streaming application programming interface (API) was used and VirusTotal was used for labelling the dataset. A random forest classification model was used with a combination of features derived from a range of sources. The random forest model without any tuning and feature selection produced a recall value of 0.89. After further investigation and applying parameter tuning and feature selection methods, however, we were able to improve the classifier performance to 0.92 in recall.
使用监督机器学习算法检测在线社交网络中的可疑url
社交网络中越来越多的恶意内容需要自动化的方法来检测和消除这些内容。本文描述了一种用于检测在线社交网络(ONSs)中恶意内容分布的监督机器学习分类模型。多源特性已被用于检测包含恶意统一资源定位器(url)的社交网络帖子。这些url可能会将用户引导到包含恶意内容、飞车下载攻击、网络钓鱼、垃圾邮件和诈骗的网站。在数据收集阶段,使用Twitter流媒体应用程序编程接口(API),并使用VirusTotal对数据集进行标记。采用随机森林分类模型,结合多种来源的特征进行分类。没有任何调优和特征选择的随机森林模型产生的召回值为0.89。然而,经过进一步的研究和应用参数调优和特征选择方法,我们能够将分类器的性能提高到召回率0.92。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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