睫毛膏:系统地生成记忆和安全的密码

Avirup Mukherjee, Kousshik Murali, S. Jha, Niloy Ganguly, Rahul Chatterjee, Mainack Mondal
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引用次数: 1

摘要

密码是在线认证用户的最常用机制。然而,研究表明,用户发现很难创建和管理安全的密码。为此,密码短语通常被推荐作为密码的可用替代品,因为密码可能容易记忆且难以猜测。然而,正如我们所展示的,用户选择的密码短语不够安全,而最先进的机器生成的密码短语很难记住。在这项工作中,我们的目标是解决实际使用的生成密码短语的系统的缺点。特别是,我们解决了生成安全和可记忆的密码短语的问题,并将它们与用户选择的使用中的密码短语进行比较。我们从先前泄露的密码数据库中识别并表征了72,999个用户选择的使用中唯一的英语密码。然后我们利用这种理解来创建一个新的框架来测量密码短语的可记忆性和可猜测性。利用我们的框架,我们设计了MASCARA,它遵循一个受限的马尔可夫生成过程来创建密码短语,优化了记忆性和可猜测性。我们对密码短语的评估表明,睫毛膏生成的密码短语比使用中的用户生成的密码短语更难猜测,而与最先进的机器生成的密码短语相比,睫毛膏生成的密码短语更容易记住。我们与众包平台多产进行了一项分两部分的用户研究,以证明用户在使用睫毛膏密码短语时具有最高的记忆召回率(和最低的错误率)。此外,对于用户所需长度的密码短语,与当前系统生成的密码短语相比,mascara生成的密码短语的召回率高出60-100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MASCARA : Systematically Generating Memorable And Secure Passphrases
Passwords are the most common mechanism for authenticating users online. However, studies have shown that users find it difficult to create and manage secure passwords. To that end, passphrases are often recommended as a usable alternative to passwords, which would potentially be easy to remember and hard to guess. However, as we show, user-chosen passphrases fall short of being secure, while state-of-the-art machine-generated passphrases are difficult to remember. In this work, we aim to tackle the drawbacks of the systems that generate passphrases for practical use. In particular, we address the problem of generating secure and memorable passphrases and compare them against user chosen passphrases in use. We identify and characterize 72, 999 user-chosen in-use unique English passphrases from prior leaked password databases. Then we leverage this understanding to create a novel framework for measuring memorability and guessability of passphrases. Utilizing our framework, we design MASCARA, which follows a constrained Markov generation process to create passphrases that optimize for both memorability and guessability. Our evaluation of passphrases shows that MASCARA -generated passphrases are harder to guess than in-use user-generated passphrases, while being easier to remember compared to state-of-the-art machine-generated passphrases. We conduct a two-part user study with crowdsourcing platform Prolific to demonstrate that users have highest memory-recall (and lowest error rate) while using MASCARA passphrases. Moreover, for passphrases of length desired by the users, the recall rate is 60-100% higher for MASCARA-generated passphrases compared to current system-generated ones.
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