AugSplicing: Synchronized Behavior Detection in Streaming Tensors
Abstract
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.
Cite
@article{arxiv.2012.02006,
title = {AugSplicing: Synchronized Behavior Detection in Streaming Tensors},
author = {Jiabao Zhang and Shenghua Liu and Wenting Hou and Siddharth Bhatia and Huawei Shen and Wenjian Yu and Xueqi Cheng},
journal= {arXiv preprint arXiv:2012.02006},
year = {2021}
}
Comments
AAAI Conference on Artificial Intelligence (AAAI), 2021