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首页> 外文期刊>IEEE transactions on mobile computing >Kollector: Detecting Fraudulent Activities on Mobile Devices Using Deep Learning
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Kollector: Detecting Fraudulent Activities on Mobile Devices Using Deep Learning

机译:Koller:通过深入学习检测移动设备上的欺诈活动

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摘要

With the rapid growth in smartphone usage, preventing leakage of personal information and privacy has become a challenging task. One major consequence of such leakage is impersonation. This type of illegal usage is nearly impossible to prevent as existing preventive mechanisms (e.g., passcode and fingerprinting), are not capable of continuously monitoring usage and determining whether the user is authorized. Once unauthorized users can defeat the initial protection mechanisms, they would have full access to the devices including using stored passwords to access high-value websites. We present Kollector, a new framework to detect impersonation based on a multi-view bagging deep learning approach to capture sequential tapping information on the smart-phone's keyboard. We construct a sequential-tapping biometrics model to continuously authenticate the user while typing. We empirically evaluated our system using real-world phone usage sessions from 26 users over eight weeks. We then compared our model against commonly used shallow machine techniques and find that our system performs better than other approaches and can achieve an 8.42 percent equal error rate, a 94.24 percent accuracy and a 94.41 percent H-mean using only the accelerometer and only five keyboard taps. We also experiment with using only three keyboard taps and find that the system still yields high accuracy while giving additional opportunities to make more decisions that can result in more accurate final decisions.
机译:随着智能手机使用的快速增长,防止个人信息泄露和隐私已成为一个具有挑战性的任务。这种泄漏的一个主要结果是冒充。这种类型的非法使用几乎不可能防止作为现有的预防机制(例如,密码和指纹),不能连续监测使用并确定用户是否被授权。一旦未经授权的用户可以打败初始保护机制,它们就可以完全访问设备,包括使用存储的密码访问高值网站。我们呈现Kollector,一个新的框架,以检测基于多视图袋的深度学习方法来捕获智能手机键盘上的连续攻丝信息的多视图。我们构建一个顺序攻丝生物识别模型,以在键入时连续验证用户。我们经验从八周超过26个用户的真实手机使用会话进行了经验评估了我们的系统。然后,我们将模型与常用的浅机器技术进行比较,发现我们的系统比其他方法更好,并且可以达到8.42%的差错率,高精度为94.24%,仅使用加速度计和仅使用五个键盘而获得94.41%的H-yan。水龙头。我们还使用三个键盘抽头进行实验,并发现系统仍然高度高精度,同时提供了额外的机会,以制定可能导致更准确的最终决策的更多决定。

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