我们如何创建一个奇妙的密码?

Simon S. Woo
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引用次数: 2

摘要

虽然可发音性可以提高密码的可记忆性,但现有的大多数密码生成方法都没有在设计中适当地考虑密码的可发音性。在这项工作中,我们展示了当前可发音密码生成方法的几个不足,然后提出了ProSemPass,一种生成可发音和语义有意义的密码的新方法。在我们的方法中,用户提供初始输入单词,我们的系统通过自动创建一个组合来提高用户提供的单词的发音和含义。为了衡量我们方法的强度,我们使用攻击者模型,攻击者完全了解我们的密码生成算法。我们测量猜测数字的强度,并将其与其他现有的密码生成方法进行比较。通过对1563名亚马逊MTurkers在9种不同条件下进行的大规模irb批准的用户研究,我们的方法比当前可发音密码方法的召回率高出30%,并且比离线猜测攻击限制更强。
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How Do We Create a Fantabulous Password?
Although pronounceability can improve password memorability, most existing password generation approaches have not properly integrated the pronounceability of passwords in their designs. In this work, we demonstrate several shortfalls of current pronounceable password generation approaches, and then propose, ProSemPass, a new method of generating passwords that are pronounceable and semantically meaningful. In our approach, users supply initial input words and our system improves the pronounceability and meaning of the user-provided words by automatically creating a portmanteau. To measure the strength of our approach, we use attacker models, where attackers have complete knowledge of our password generation algorithms. We measure strength in guess numbers and compare those with other existing password generation approaches. Using a large-scale IRB-approved user study with 1,563 Amazon MTurkers over 9 different conditions, our approach achieves a 30% higher recall than those from current pronounceable password approaches, and is stronger than the offline guessing attack limit.
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