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A Skewness-Based Framework for Mobile App Permission Recommendation and Risk Evaluation

机译:基于偏度的移动应用许可建议和风险评估框架

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Mobile ecosystem has penetrated into people's daily life over these years and most web services are now using mobile application for service consumption. Permission system has been developed to protect the sensitive and valuable information stored in mobile. However, due to the complexity of permission framework, the permission over-privilege problem has become a serious problem bringing huge risk for the mobile ecosystem. Therefore, in this paper, we present a skewness-based framework for permission recommendation and risk evaluation, intending to facilitate the permission configuration and identify the risk applications. Specially, the topic model Latent Dirichlet Allocation is presented to build the mapping between app's functionality and permission. Then a two-phase skewness-based filtering strategy is developed and combined with the collaborative filtering framework to remove the abnormal applications and permissions. Finally, the high risk permissions for each application are identified based on the difference between the malicious applications and popular applications. The experiments based on the Apps from Google Play shows that comparing with the state-of-the-art; our approach can effectively remove the abnormal applications and permissions, identify the unexpected and risk permissions, as well as generate the recommended permission configurations with better performance to reduce the permission over-privilege problem.
机译:这些年来,移动生态系统已经渗透到人们的日常生活中,并且大多数Web服务现在都在使用移动应用程序来消费服务。已经开发了权限系统来保护存储在移动设备中的敏感和有价值的信息。但是,由于权限框架的复杂性,权限超权限问题已经成为一个严重的问题,给移动生态系统带来了巨大的风险。因此,在本文中,我们提出了一种基于偏度的权限推荐和风险评估框架,旨在促进权限配置和识别风险应用程序。特别地,主题模型Latent Dirichlet Allocation被提出来构建应用程序功能和权限之间的映射。然后,开发了基于偏度的两阶段过滤策略,并将其与协作过滤框架结合使用,以删除异常的应用程序和权限。最后,根据恶意应用程序与流行应用程序之间的差异,确定每个应用程序的高风险权限。基于Google Play的Apps进行的实验表明,与最新技术进行比较;我们的方法可以有效地删除异常的应用程序和权限,识别意外和风险权限,并生成具有更好性能的建议权限配置,以减少权限超权限问题。

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