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Evaluating smartphone-based dynamic security questions for fallback authentication: a field study

机译:评估基于智能手机的动态安全性问题以进行后备身份验证:一项现场研究

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To address the limitations of static challenge question based fallback authentication mechanisms (e.g., easy predictability), recently, smartphone based autobiographical authentication mechanisms have been explored where challenge questions are not predetermined and are instead generated dynamically based on users’ day-to-day activities captured by smartphones. However, as answering different types and styles of questions is likely to require different amounts of cognitive effort and affect users’ performance, a thorough study is required to investigate the effect of type and style of challenge questions and answer selection mechanisms on users’ recall performance and usability of such systems. Towards that, this paper explores seven different types of challenge questions where different types of questions are generated based on users’ smartphone usage data. For evaluation, we conducted a field study for a period of 30 days with 24 participants who were recruited in pairs to simulate different kinds of adversaries (e.g., close friends, significant others). Our findings suggest that the question types do have a significant effect on user performance. Furthermore, to address the variations in users’ accuracy across multiple sessions and question types, we investigate and present a Bayesian classifier based authentication algorithm that can authenticate legitimate users with high accuracy by leveraging individual response patterns.
机译:为了解决基于静态质询问题的后备身份验证机制(例如,易于预测)的局限性,最近,基于智能手机的自传身份验证机制得到了探索,其中质询问题不是预先确定的,而是根据用户的日常活动动态生成的被智能手机捕获。但是,由于回答不同类型和样式的问题可能需要不同的认知努力并影响用户的表现,因此需要进行深入研究以调查挑战性问题和样式以及答案选择机制对用户回想表现的影响以及此类系统的可用性。为此,本文探讨了七种不同类型的挑战性问题,其中根据用户的智能手机使用情况数据生成了不同类型的问题。为了进行评估,我们对24名参与者进行了为期30天的现场研究,他们被成对招募来模拟不同类型的对手(例如,亲密的朋友,重要的其他人)。我们的发现表明,问题类型确实对用户性能有重大影响。此外,为了解决跨多个会话和问题类型的用户准确度的变化,我们研究并提出了一种基于贝叶斯分类器的身份验证算法,该算法可以利用各个响应模式来高度准确地验证合法用户。

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