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An efficient hybrid system for anomaly detection in social networks

机译:社交网络中的异常检测有效的混合系统

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Anomaly detection has been an essential and dynamic research area in the data mining. A wide range of applications including different social medias have adopted different state-of-the-art methods to identify anomaly for ensuring user’s security and privacy. The social network refers to a forum used by different groups of people to express their thoughts, communicate with each other, and share the content needed. This social networks also facilitate abnormal activities, spread fake news, rumours, misinformation, unsolicited messages, and propaganda post malicious links. Therefore, detection of abnormalities is one of the important data analysis activities for the identification of normal or abnormal users on the social networks. In this paper, we have developed a hybrid anomaly detection method named DT-SVMNB that cascades several machine learning algorithms including decision tree (C5.0), Support Vector Machine (SVM) and Na?ve Bayesian classifier (NBC) for classifying normal and abnormal users in social networks. We have extracted a list of unique features derived from users’ profile and contents. Using two kinds of dataset with the selected features, the proposed machine learning model called DT-SVMNB is trained. Our model classifies users as depressed one or suicidal one in the social network. We have conducted an experiment of our model using synthetic and real datasets from social network. The performance analysis demonstrates around 98% accuracy which proves the effectiveness and efficiency of our proposed system.
机译:异常检测是数据挖掘中必不可少的动态的研究区域。包括不同社交媒体的广泛应用程序采用了不同的最先进方法来识别异常,以确保用户的安全和隐私。社交网络是指不同群体用来表达他们的想法,互相沟通的论坛,并分享所需的内容。这种社交网络还促进了异常活动,传播假新闻,谣言,错误信息,未经请求的消息和宣传后的恶意链接。因此,异常检测是用于识别社交网络上正常或异常用户的重要数据分析活动之一。在本文中,我们开发了一种名为DT-SVMNB的混合异常检测方法,该方法级联包括决策树(C5.0),支持向量机(SVM)和NA贝塞贝氏分类器(NBC)的多种机器学习算法,用于分类正常和社交网络中的异常用户。我们已提取从用户配置文件和内容派生的唯一功能列表。使用带有所选功能的两种数据集,培训了称为DT-SVMNB的所提出的机器学习模型。我们的模型将用户分类为社交网络中的一个或自杀之一。我们使用来自社交网络的合成和真实数据集进行了模型的实验。性能分析显示大约98%的准确性,证明了我们所提出的系统的有效性和效率。

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