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Mobile cloud offloading for malware detections with learning

机译:移动云卸载,可通过学习来检测恶意软件

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摘要

Accurate malware detections on mobile devices such as smartphones require fast processing of a large number of data and thus cloud offloading can be used to improve the security performance of mobile devices with limited resources. The performance of malware detection with cloud offloading depends on the computation speed of the cloud, the population sharing the cloud resources and the bandwidth of the radio access. In the paper, we investigate the offloading rates of smartphones connecting to the same security server in a cloud under dynamic network bandwidths and formulate their interactions as a non-cooperative mobile cloud offloading game. The Nash equilibrium of the mobile cloud offloading game and the existence condition are presented. An offloading algorithm based on Q-learning is proposed for smartphones to determine their offloading rates for malware detection with unknown parameters such as transmission costs. Simulation results show that the proposed offloading strategy can achieve the optimal rate and improve the user's utility under dynamic network bandwidths.
机译:在诸如智能手机之类的移动设备上进行准确的恶意软件检测需要快速处理大量数据,因此,可以使用云卸载来改善资源有限的移动设备的安全性能。通过云卸载实现恶意软件检测的性能取决于云的计算速度,共享云资源的人群以及无线电访问的带宽。在本文中,我们研究了在动态网络带宽下连接到云中同一安全服务器的智能手机的卸载速率,并将它们的交互关系表述为非合作的移动云卸载游戏。给出了移动云卸载游戏的纳什均衡和存在条件。提出了一种基于Q学习的卸载算法,用于智能手机确定其卸载率,以检测未知参数(例如传输成本)进行恶意软件检测。仿真结果表明,在动态网络带宽下,所提出的卸载策略可以达到最优速率,提高用户的利用率。

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