Dynamic Pattern Detection with Temporal Consistency and Connectivity Constraints

S. Speakman, Yating Zhang, Daniel B. Neill
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引用次数: 34

Abstract

We explore scalable and accurate dynamic pattern detection methods in graph-based data sets. We apply our proposed Dynamic Subset Scan method to the task of detecting, tracking, and source-tracing contaminant plumes spreading through a water distribution system equipped with noisy, binary sensors. While static patterns affect the same subset of data over a period of time, dynamic patterns may affect different subsets of the data at each time step. These dynamic patterns require a new approach to define and optimize penalized likelihood ratio statistics in the subset scan framework, as well as new computational techniques that scale to large, real-world networks. To address the first concern, we develop new subset scan methods that allow the detected subset of nodes to change over time, while incorporating temporal consistency constraints to reward patterns that do not dramatically change between adjacent time steps. Second, our Additive Graph Scan algorithm allows our novel scan statistic to process small graphs (500 nodes) in 4.1 seconds on average while maintaining an approximation ratio over 99% compared to an exact optimization method, and to scale to large graphs with over 12,000 nodes in 30 minutes on average. Evaluation results across multiple detection, tracking, and source-tracing tasks demonstrate substantial performance gains achieved by the Dynamic Subset Scan approach.
具有时间一致性和连通性约束的动态模式检测
我们在基于图的数据集中探索可扩展和准确的动态模式检测方法。我们将我们提出的动态子集扫描方法应用于检测、跟踪和追踪污染物羽流的任务,这些污染物羽流通过配备有噪声的二元传感器的配水系统传播。静态模式在一段时间内影响相同的数据子集,而动态模式可能在每个时间步影响不同的数据子集。这些动态模式需要一种新的方法来定义和优化子集扫描框架中的惩罚似然比统计,以及扩展到大型现实世界网络的新计算技术。为了解决第一个问题,我们开发了新的子集扫描方法,允许检测到的节点子集随时间变化,同时结合时间一致性约束来奖励在相邻时间步之间不会发生显着变化的模式。其次,我们的Additive Graph Scan算法允许我们的新扫描统计数据平均在4.1秒内处理小图(500个节点),同时与精确优化方法相比保持超过99%的近似值,并在平均30分钟内扩展到具有超过12,000个节点的大型图。跨多个检测、跟踪和源跟踪任务的评估结果表明,动态子集扫描方法实现了显著的性能提升。
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