论文标题
AUGSPLICING:流张器中的同步行为检测
AugSplicing: Synchronized Behavior Detection in Streaming Tensors
论文作者
论文摘要
我们如何在锁定锁定设备中安装和卸载应用程序等时刻元组中跟踪同步行为,以提高其在App Store中的排名?我们将这些元组建模为流量张量中的条目,随着时间的推移,它以其模式增加了属性大小。同步行为倾向于在这种张量,信号异常行为或有趣的群落中形成密集的块(即子镜)。但是,现有的密集块检测方法要么基于静态张量,要么在流设置中缺乏有效的算法。因此,我们提出了一种快速流算法,即augsplicing,可以通过在新单元中使用传入的检测来逐步拼接先前的检测,从而避免在每个跟踪时间步骤中重新运行所有历史记录数据,从而检测到顶部密集的块。 Augsplicing基于指导算法的剪接条件(第4节)。与最先进的方法相比,我们的方法是(1)在安装现实世界应用的数据中检测欺诈行为,并在校园Wi-Fi数据中找到具有有趣功能的同步学生; (2)与密集块检测的剪接理论的鲁棒性; (3)流式传输速度比现有流媒体算法更快,精度非常可比。
How can we track synchronized behavior in a stream of time-stamped tuples, such as mobile devices installing and uninstalling applications in the lockstep, to boost their ranks in the app store? We model such tuples as entries in a streaming tensor, which augments attribute sizes in its modes over time. Synchronized behavior tends to form dense blocks (i.e. subtensors) in such a tensor, signaling anomalous behavior, or interesting communities. However, existing dense block detection methods are either based on a static tensor, or lack an efficient algorithm in a streaming setting. Therefore, we propose a fast streaming algorithm, AugSplicing, which can detect the top dense blocks by incrementally splicing the previous detection with the incoming ones in new tuples, avoiding re-runs over all the history data at every tracking time step. AugSplicing is based on a splicing condition that guides the algorithm (Section 4). Compared to the state-of-the-art methods, our method is (1) effective to detect fraudulent behavior in installing data of real-world apps and find a synchronized group of students with interesting features in campus Wi-Fi data; (2) robust with splicing theory for dense block detection; (3) streaming and faster than the existing streaming algorithm, with closely comparable accuracy.