根据社交网络上传播的信息评估密码强度:依靠数据重建和生成模型的组合方法

Q1 Social Sciences
Maurizio Atzori , Eleonora Calò , Loredana Caruccio , Stefano Cirillo , Giuseppe Polese , Giandomenico Solimando
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引用次数: 0

摘要

由于密码攻击技术的广泛应用,确保个人账户的安全已成为人们关注的焦点。虽然密码是防止未经授权访问的主要防御手段,但重复使用易于记忆的密码的做法增加了人们的安全风险。传统的密码强度评估方法往往不够充分,因为它们忽略了用户经常在社交网络上分享的公开个人信息。此外,虽然用户倾向于限制对单个个人资料的访问,但个人资料往往会无意中在多个个人资料中共享,从而使用户面临密码威胁。在本文中,我们介绍了一种数据重建工具(即 soda advance)的扩展功能,其中包含一个新模块,用于根据多个社交网络上的公开数据评估密码强度。它依赖于一种新的度量方法来对密码强度进行综合评估。此外,我们还研究了新兴的大型语言模型(LLM)在评估和生成密码方面的能力和风险。具体来说,利用 LLM 的扩散,我们可以通过自动模板学习方法与许多 LLM 进行交互。通过对 100 名真实用户进行实验评估,证明了 LLMs 在根据用户配置文件相关数据生成强密码方面的有效性。此外,LLMs 在评估任务中也被证明是有效的,但是 LLMs 和苏打进阶的结合使用保证了更好的分类,在 F1 分数方面提高了 10%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating password strength based on information spread on social networks: A combined approach relying on data reconstruction and generative models

Ensuring the security of personal accounts has become a key concern due to the widespread password attack techniques. Although passwords are the primary defense against unauthorized access, the practice of reusing easy-to-remember passwords increases security risks for people. Traditional methods for evaluating password strength are often insufficient since they overlook the public personal information that users frequently share on social networks. In addition, while users tend to limit access to their data on single profiles, personal data is often unintentionally shared across multiple profiles, exposing users to password threats. In this paper, we present an extension of a data reconstruction tool, namely soda advance, which incorporates a new module to evaluate password strength based on publicly available data across multiple social networks. It relies on a new metric to provide a comprehensive evaluation of password strength. Moreover, we investigate the capabilities and risks associated with emerging Large Language Models (LLMs) in evaluating and generating passwords, respectively. Specifically, by exploiting the proliferation of LLMs, it has been possible to interact with many LLMs through Automated Template Learning methodologies. Experimental evaluations, performed with 100 real users, demonstrate the effectiveness of LLMs in generating strong passwords with respect to data associated with users’ profiles. Furthermore, LLMs have proved to be effective also in evaluation tasks, but the combined usage of LLMs and soda advance guaranteed better classifications up to more than 10% in terms of F1-score.

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来源期刊
Online Social Networks and Media
Online Social Networks and Media Social Sciences-Communication
CiteScore
10.60
自引率
0.00%
发文量
32
审稿时长
44 days
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