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Phishing Detection on Twitter Streams

机译:Twitter流上的网络钓鱼检测

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With the prevalence of cutting-edge technology, the social media network is gaining popularity and is becoming a worldwide phenomenon. Twitter is one of the most widely used social media sites, with over 500 million users all around the world. Along with its rapidly growing number of users, it has also attracted unwanted users such as scammers, spammers and phishers. Research has already been conducted to prevent such issues using network or contextual features with super-; vised learning. However, these methods are not robust to changes, such as temporal changes or changes in phishing trends. Current techniques also use additional network information. However, these techniques cannot be used before spammers form a particular number of user relationships. We propose an unsupervised technique that detects phishing in Twitter using a 2-phase unsupervised learning algorithm called PDT (Phishing Detector for Twitter). Prom the experiments we show that our technique has high accuracy ranging between 0.88 and 0.99.
机译:随着尖端技术的普及,社交媒体网络越来越流行,并且正在成为一种全球现象。 Twitter是使用最广泛的社交媒体网站之一,全世界有超过5亿用户。随着用户数量的快速增长,它还吸引了欺诈者,垃圾邮件发送者和网络钓鱼者等有害用户。已经进行了研究,以使用具有超级功能的网络或上下文功能来防止此类问题。可见学习。但是,这些方法对于变化(例如时间变化或网络钓鱼趋势的变化)并不健壮。当前的技术还使用附加的网络信息。但是,在垃圾邮件发送者形成特定数量的用户关系之前,不能使用这些技术。我们提出了一种无监督技术,该技术使用称为PDT(Twitter的网络钓鱼检测器)的两阶段无监督学习算法来检测Twitter中的网络钓鱼。对实验进行证明,我们证明我们的技术具有0.88至0.99的高精度。

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