Exploring the Impact of Password Dataset Distribution on Guessing

Hazel Murray, David Malone
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引用次数: 5

Abstract

Leaks from password datasets are a regular occur-rence. An organization may defend a leak with reassurances that just a small subset of passwords were taken. In this paper we show that the leak of a relatively small number of text-based passwords from an organizations' stored dataset can lead to a further large collection of users being compromised. Taking a sample of passwords from a given dataset of passwords we exploit the knowledge we gain of the distribution to guess other samples from the same dataset. We show theoretically and empirically that the distribution of passwords in the sample follows the same distribution as the passwords in the whole dataset. We propose a function that measures the ability of one distribution to estimate another. Leveraging this we show that a sample of passwords leaked from a given dataset, will compromise the remaining passwords in that dataset better than a sample leaked from another source.
探索密码数据集分布对猜测的影响
密码数据集泄露是经常发生的事情。组织可能会通过保证只有一小部分密码被盗来保护泄漏。在本文中,我们展示了从组织存储的数据集中泄漏相对少量的基于文本的密码可能导致进一步的大量用户受到损害。从给定的密码数据集中取一个密码样本,我们利用我们获得的分布知识来猜测来自同一数据集的其他样本。我们从理论上和经验上证明,样本中的密码分布遵循与整个数据集中密码分布相同的分布。我们提出了一个函数来衡量一个分布估计另一个分布的能力。利用这一点,我们展示了从给定数据集中泄露的密码样本,将比从其他来源泄露的样本更好地破坏该数据集中剩余的密码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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