隐私评估漏洞评分系统

Zackary Foreman, Thomas Bekman, T. Augustine, H. Jafarian
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引用次数: 1

摘要

目前,商业实体从网上收集和使用消费者信息的指导方针是由美国联邦贸易委员会制定的公平信息实践原则指导的。这些指导方针是不充分的,过时的,对消费者提供的保护很少。此外,有许多技术可以将大公司和政府收集的存储数据匿名化。然而,目前尚不存在能够在数据泄露事件中对这些信息的影响进行评估和评分的框架。在这项工作中,提出了一个私有数据脆弱性评分和评估框架。创建此框架是为了与当前采用的框架并行使用,这些框架用于对软件中的其他缺陷进行评分和评估,包括CVSS和CWSS。它被称为隐私评估漏洞评分系统(PAVSS),量化个人在使用在线平台时面临的隐私泄露漏洞。该框架基于一组关于用户行为、在线平台的固有属性以及执行网络攻击时可用数据的有用性的假设。这些指标在我们模型中的权重是通过调查网络安全专家来确定的。最后,我们测试了基于用户行为的假设的有效性,并通过分析来自大型twitter数据集的用户帖子间接测试了我们的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PAVSS: Privacy Assessment Vulnerability Scoring System
Currently, the guidelines for business entities to collect and use consumer information from online sources is guided by the Fair Information Practice Principles set forth by the Federal Trade Commission in the United States. These guidelines are inadequate, outdated, and provide little protection for consumers. Moreover, there are many techniques to anonymize the stored data that was collected by large companies and governments. However, what does not exist is a framework that is capable of evaluating and scoring the effects of this information in the event of a data breach. In this work, a framework for scoring and evaluating the vulnerability of private data is presented. This framework is created to be used in parallel with currently adopted frameworks that are used to score and evaluate other areas of deficiencies within the software, including CVSS and CWSS. It is dubbed the Privacy Assessment Vulnerability Scoring System (PAVSS) and quantifies the privacy-breach vulnerability an individual takes on when using an online platform. This framework is based on a set of hypotheses about user behavior, inherent properties of an online platform, and the usefulness of available data in performing a cyber attack. The weight each of these metrics has within our model is determined by surveying cybersecurity experts. Finally, we test the validity of our user-behavior based hypotheses, and indirectly our model by analyzing user posts from a large twitter data set.
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