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首页> 外文期刊>Journal of supercomputing >Outlier and anomaly pattern detection on data streams
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Outlier and anomaly pattern detection on data streams

机译:数据流的异常值和异常模式检测

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摘要

A data stream is a sequence of data generated continuously over time. A data stream is too big to be saved in memory, and its underlying data distribution may change over time. Outlier detection aims to find data instances which significantly deviate from the underlying data distribution. While most of outlier detection methods work in batch mode where all the data samples are available at once, the necessity for efficient outlier and anomaly pattern detection methods in a data stream has increased. Outlier detection is performed at an individual instance level, and anomalous pattern detection involves detecting a point in time where the behavior of the data becomes unusual and differs from normal behavior. Alternatively, concept drift detection methods find a concept-changing point in the streaming data and try to adapt the model to the new emerging pattern. In this paper, we provide a review of outlier detection, anomaly pattern detection, and concept drift detection for streaming data.
机译:数据流是随时间连续生成的数据序列。数据流太大而无法保存在内存中,并且其基础数据分布可能会随时间变化。离群值检测旨在查找与基础数据分布明显不同的数据实例。尽管大多数异常值检测方法都以批处理模式工作,在该模式下所有数据样本都可以同时使用,但在数据流中采用有效异常值和异常模式检测方法的必要性却增加了。离群值检测是在单个实例级别执行的,异常模式检测包括检测数据的行为变得异常并且与正常行为不同的时间点。或者,概念漂移检测方法在流数据中找到概念改变点,并尝试使模型适应新出现的模式。在本文中,我们对流数据的离群值检测,异常模式检测和概念漂移检测进行了概述。

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