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A Kind of Identity Authentication Method Based on Browsing Behaviors

机译:一种基于浏览行为的身份认证方法

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Due to the continued growth threat in Phishing, a kind of stable identity authentication method is highly needed based on individual characteristics just like browsing behaviors. Most of the existing researches focused on browsing behavior patterns of group users are used in personal recommendation, website structure optimization or web prediction. In order to ensure the validity of user identity and the security of e-commerce, we construct personalized user browsing behavior model based on ARM (Association Rule Mining) from Web usage log. We compare real-time browsing behaviors with history model to identify a user's real identity in Web pages accessed. According to the results of the experiments, for the illegal users, this method can attain 91.3% detection rate with below 10% false alarm rate. Thus, it can achieve high real-time and recognition efficiency.
机译:由于网络钓鱼的持续增长威胁,迫切需要一种基于个人特征的稳定身份认证方法,就像浏览行为一样。现有的针对群体用户浏览行为模式的研究大多用于个人推荐,网站结构优化或网站预测。为了确保用户身份的有效性和电子商务的安全性,我们从Web使用日志中构建了基于ARM(关联规则挖掘)的个性化用户浏览行为模型。我们将实时浏览行为与历史记录模型进行比较,以在访问的网页中识别用户的真实身份。根据实验结果,对于非法用户,该方法可以达到91.3%的检测率,低于10%的误报率。因此,它可以实现高实时性和识别效率。

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