PriWe:基于众包用户期望的手机应用隐私设置推荐

Rui Liu, Jiannong Cao, Lei Yang, Kehuan Zhang
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引用次数: 16

摘要

隐私是移动应用程序的一个关键问题,因为智能手机中有大量的个人和敏感信息。提出了各种机制和工具来检测和减轻隐私泄漏。然而,他们很少考虑用户的偏好和期望。用户对不同的移动应用抱有不同的期望。例如,用户可以允许社交应用而不是游戏应用访问他们的照片,因为当娱乐应用获取个人照片时,这超出了用户的预期。因此,我们认为了解用户对各种移动应用程序的隐私期望并帮助他们相应地降低智能手机中的隐私风险是至关重要的。为了实现这一目标,我们提出并实施了PriWe,这是一个基于众包的系统,由用户在智能手机中贡献其应用程序的隐私权限设置。PriWe利用众包权限设置来了解用户的隐私期望,并提供针对应用程序的建议,以减少信息泄露。我们在现实世界中部署PriWe进行评估。根据来自现实世界的78名用户和来自Amazon Mechanical Turk的382名参与者的反馈,PriWe可以给出符合参与者隐私期望且大多数被用户接受的适当建议,从而帮助他们减轻智能手机中的隐私泄露。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PriWe: Recommendation for Privacy Settings of Mobile Apps Based on Crowdsourced Users' Expectations
Privacy is a pivotal issue of mobile apps because there is a plethora of personal and sensitive information in smartphones. Various mechanisms and tools are proposed to detect and mitigate privacy leaks. However, they rarely consider users' preferences and expectations. Users hold various expectations towards different mobile apps. For example, users can allow a social app to access their photos rather than a game app because it is beyond users' expectation when an entertainment app gets the personal photos. Therefore, we believe it is vital to understand users' privacy expectations to various mobile apps and help them to mitigate privacy risks in the smartphone accordingly. To achieve this objective, we propose and implement PriWe, a system based on crowd sourcing driven by users who contribute privacy permission settings of their apps in smartphones. PriWe leverages the crowd sourced permission settings to understand users' privacy expectation and provides app specific recommendations to mitigate information leakage. We deployed PriWe in the real world for evaluation. According to the feedbacks of 78 users from the real world and 382 participants from Amazon Mechanical Turk, PriWe can make proper recommendations which can meet participants' privacy expectation and are mostly accepted by users, thereby help them to mitigate privacy disclosure in smartphones.
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