异常检测
水准点(测量)
计算机科学
流式数据
数据流挖掘
概念漂移
数据挖掘
异常(物理)
流算法
数据流
过程(计算)
分析
机器学习
人工智能
操作系统
物理
上下界
数学分析
电信
数学
地理
凝聚态物理
大地测量学
作者
Subutai Ahmad,Alexander Lavin,Scott Purdy,Zuha Agha
出处
期刊:Neurocomputing
[Elsevier BV]
日期:2017-11-01
卷期号:262: 134-147
被引量:740
标识
DOI:10.1016/j.neucom.2017.04.070
摘要
We are seeing an enormous increase in the availability of streaming, time-series data. Largely driven by the rise of connected real-time data sources, this data presents technical challenges and opportunities. One fundamental capability for streaming analytics is to model each stream in an unsupervised fashion and detect unusual, anomalous behaviors in real-time. Early anomaly detection is valuable, yet it can be difficult to execute reliably in practice. Application constraints require systems to process data in real-time, not batches. Streaming data inherently exhibits concept drift, favoring algorithms that learn continuously. Furthermore, the massive number of independent streams in practice requires that anomaly detectors be fully automated. In this paper we propose a novel anomaly detection algorithm that meets these constraints. The technique is based on an online sequence memory algorithm called Hierarchical Temporal Memory (HTM). We also present results using the Numenta Anomaly Benchmark (NAB), a benchmark containing real-world data streams with labeled anomalies. The benchmark, the first of its kind, provides a controlled open-source environment for testing anomaly detection algorithms on streaming data. We present results and analysis for a wide range of algorithms on this benchmark, and discuss future challenges for the emerging field of streaming analytics.
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