论文标题
阅读:基于动态分区的区域异常检测框架
ReAD: A Regional Anomaly Detection Framework Based on Dynamic Partition
论文作者
论文摘要
从城市数据中检测异常区域是一个重大的研究问题。但是,据我们所知,以前针对时空异常设计的方法是基于道路或网格的,这通常会导致数据稀少性问题并影响检测结果。在本文中,我们提出了一种动态区域分区方法来解决上述问题。此外,我们提出了一个无监督的区域异常检测框架(读取),以通过共同考虑空间和时间特性来检测具有任意形状的异常区域。具体而言,提出的框架首先通过动态区域分区生成区域。它一直保持观察在同一区域具有相邻位置和类似的非空间属性读数,并且与基于网格的方法相比,可以减轻数据的稀疏性和异质性。然后,将通过区域发散计算方法为每个区域计算一个异常度量。根据不同情况,可以通过加权方法或波浪方式检测到异常区域。对模拟数据集和现实世界应用程序进行的实验证明了所提出的框架的有效性和实用性。
The detection of the abnormal area from urban data is a significant research problem. However, to the best of our knowledge, previous methods designed on spatio-temporal anomalies are road-based or grid-based, which usually causes the data sparsity problem and affects the detection results. In this paper, we proposed a dynamic region partition method to address the above issues. Besides, we proposed an unsupervised REgional Anomaly Detection framework (ReAD) to detect abnormal regions with arbitrary shapes by jointly considering spatial and temporal properties. Specifically, the proposed framework first generate regions via a dynamic region partition method. It keeps that observations in the same region have adjacent locations and similar non-spatial attribute readings, and could alleviate data sparsity and heterogeneity compared with the grid-based approach. Then, an anomaly metric will be calculated for each region by a regional divergence calculation method. The abnormal regions could be finally detected by a weighted approach or a wavy approach according to the different scenario. Experiments on both the simulated dataset and real-world applications demonstrate the effectiveness and practicability of the proposed framework.