具有安全和隐私意识的移动应用推荐

Hengshu Zhu, Hui Xiong, Yong Ge, Enhong Chen
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引用次数: 176

摘要

随着智能移动设备的迅速普及,可用的移动应用程序数量在过去几年中呈爆炸式增长。为了方便移动应用的选择,现有的移动应用推荐系统通常会向移动用户推荐流行的移动应用。然而,移动应用程序种类繁多,往往难以理解,尤其是与隐私和安全相关的活动和功能。因此,越来越多的移动用户出于隐私侵犯等安全方面的考虑,不愿意使用移动app。为了填补这一关键空白,本文提出开发一个具有隐私和安全意识的手机App推荐系统。设计目标是使推荐系统具备自动检测和评估移动应用安全风险的功能。然后,推荐系统根据应用的受欢迎程度和用户的安全偏好对应用进行推荐。具体来说,移动应用程序可能会导致安全风险,因为该应用程序中已经实现了不安全的数据访问权限。因此,我们首先开发技术,通过利用请求的权限自动检测每个移动应用程序的潜在安全风险。然后,我们提出了一种基于现代投资组合理论的灵活的应用推荐方法,在应用的受欢迎程度和用户的安全考虑之间取得平衡,并构建应用哈希树来高效推荐应用。最后,我们在b谷歌Play收集的大规模数据集上进行了广泛的实验,以评估我们的方法。实验结果清楚地验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mobile app recommendations with security and privacy awareness
With the rapid prevalence of smart mobile devices, the number of mobile Apps available has exploded over the past few years. To facilitate the choice of mobile Apps, existing mobile App recommender systems typically recommend popular mobile Apps to mobile users. However, mobile Apps are highly varied and often poorly understood, particularly for their activities and functions related to privacy and security. Therefore, more and more mobile users are reluctant to adopt mobile Apps due to the risk of privacy invasion and other security concerns. To fill this crucial void, in this paper, we propose to develop a mobile App recommender system with privacy and security awareness. The design goal is to equip the recommender system with the functionality which allows to automatically detect and evaluate the security risk of mobile Apps. Then, the recommender system can provide App recommendations by considering both the Apps' popularity and the users' security preferences. Specifically, a mobile App can lead to security risk because insecure data access permissions have been implemented in this App. Therefore, we first develop the techniques to automatically detect the potential security risk for each mobile App by exploiting the requested permissions. Then, we propose a flexible approach based on modern portfolio theory for recommending Apps by striking a balance between the Apps' popularity and the users' security concerns, and build an App hash tree to efficiently recommend Apps. Finally, we evaluate our approach with extensive experiments on a large-scale data set collected from Google Play. The experimental results clearly validate the effectiveness of our approach.
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