评估真实世界的隐私风险场景

M. Vuković, Pavle Skocir, Damjan Katusic, D. Jevtić, Daniela Trutin, Luka Delonga
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引用次数: 2

摘要

由于常见的数据泄露和各种安全威胁,用户隐私正在成为互联网上的一个问题。服务往往需要私人用户数据,以便提供更个性化的内容,而用户通常不知道其隐私面临的潜在风险。本文继续研究了基于前馈神经网络的用户隐私风险计算器。除了风险评估,我们还为用户提供了真实世界的示例场景,这些场景根据选定的输入参数描述隐私威胁。在本文中,我们提出了一个模型,用于选择最可能的真实世界场景,以漫画的形式呈现,从而避免用户因大量信息而感到困惑。大多数可能的场景估计是由人工神经网络执行的,该网络使用真实世界的场景和真实世界事件的估计概率进行训练。此外,我们将真实世界的场景分组,并向用户提供有关隐私风险的进一步阅读。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating real world privacy risk scenarios
User privacy is becoming an issue on the Internet due to common data breaches and various security threats. Services tend to require private user data in order to provide more personalized content and users are typically unaware of potential risks to their privacy. This paper continues our work on the proposed user privacy risk calculator based on a feedforward neural network. Along with risk estimation, we provide the users with real world example scenarios that depict privacy threats according to selected input parameters. In this paper, we present a model for selecting the most probable real world scenario, presented as a comic, and thus avoid overwhelming the user with lots of information that he/she may find confusing. Most probable scenario estimations are performed by artificial neural network that is trained with real world scenarios and estimated probabilities from real world occurrences. Additionally, we group real world scenarios into categories that are presented to the user as further reading regarding privacy risks.
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