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首页> 外文期刊>Journal of Intelligent Learning Systems and Applications >Behind HumanBoost: Analysis of Users’ Trust Decision Patterns for Identifying Fraudulent Websites
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Behind HumanBoost: Analysis of Users’ Trust Decision Patterns for Identifying Fraudulent Websites

机译:HumanBoost背后:识别欺诈性网站的用户信任决策模式分析

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This paper analyzes users’ trust decision patterns for detecting phishing sites. Our previous work proposed HumanBoost [1] which improves the accuracy of detecting phishing sites by using users’ Past Trust Decisions (PTDs). Web users are generally required to make trust decisions whenever their personal information is requested by a website. Human-Boostassumed that a database of Web user’s PTD would be transformed into a binary vector, representing phishing or not-phishing, and the binary vector can be used for detecting phishing sites, similar to the existing heuristics. Here, this paper explores the types of the users whose PTDs are useful by running a subject experiment, where 309 participants- browsed 40 websites, judged whether the site appeared to be a phishing site, and described the criterion while assessing the credibility of the site. Based on the result of the experiment, this paper classifies the participants into eight groups by clustering approach and evaluates the detection accuracy for each group. It then clarifies the types of the users who can make suitable trust decisions for HumanBoost.
机译:本文分析了用户用于检测网络钓鱼站点的信任决策模式。我们之前的工作提出了HumanBoost [1],它通过使用用户的过去信任决策(PTD)来提高检测网络钓鱼站点的准确性。通常,每当网站请求其个人信息时,Web用户就必须做出信任决定。 Human-Boost假设Web用户PTD的数据库将被转换为代表网络钓鱼或非网络钓鱼的二进制向量,并且该二进制向量可用于检测网络钓鱼站点,类似于现有的启发式方法。在此,本文通过运行主题实验来探索其PTD有用的用户类型,其中309名参与者浏览了40个网站,判断该网站是否似乎是网络钓鱼网站,并在评估网站信誉的同时描述了标准。基于实验结果,本文通过聚类的方法将参与者分为八组,并分别对每组进行检测。然后,它阐明可以为HumanBoost做出适当信任决策的用户类型。

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