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Android Permission Recommendation Using Transitive Bayesian Inference Model

机译:Android许可推荐使用及物贝叶斯推论模型

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In current Android architecture, users have to decide whether an app is safe to use or not. Technical-savvy users can make correct decisions to avoid unnecessary privacy breach. However, most users may have difficulty to make correct decisions. DroidNet is an Android permission recommendation framework based on crowdsourcing. In this framework, DroidNet runs new apps under probation mode without granting their permission requests up-front. It provides recommendations on whether to accept or reject the permission requests based on decisions from peer expert users. To seek expert users, we propose an expertise rating algorithm using transitional Bayesian inference model. The recommendation is based on the aggregated expert responses and its confidence level. Our evaluation results demonstrate that given sufficient number of experts in the network, DroidNet can provide accurate recommendations and cover majority of app requests given a small coverage from a small set of initial experts.
机译:在当前的Android架构中,用户必须决定应用是否安全使用。技术娴熟的用户可以做出正确的决策,以避免不必要的隐私违规行为。但是,大多数用户可能难以做出正确的决策。 DroidNet是一个基于众包的Android许可推荐框架。在此框架中,DroidNet在试用模式下运行新应用,而不授予其权限请求。它提供了关于是否根据对等专家用户的决定接受或拒绝许可请求的建议。为了寻求专家用户,我们提出了一种使用过渡贝叶斯推理模型的专业知识评级算法。该建议基于汇总专家响应及其置信水平。我们的评估结果表明,在网络中给出了足够数量的专家,DroidNet可以提供准确的建议,并涵盖一小组初始专家的小额覆盖范围。

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