基于极值理论的流异常检测

Alban Siffer, Pierre-Alain Fouque, A. Termier, C. Largouët
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引用次数: 270

摘要

由于时间序列异常检测在入侵检测、能源管理和金融等许多实际应用中的重要性,它引起了人们的广泛关注。根据Chandola、Banerjee和Kumar的说法,大多数检测异常值的方法要么依赖于人工设置的阈值,要么依赖于对数据分布的假设。在这里,我们提出了一种基于极值理论的新方法来检测流单变量时间序列中的异常值,该方法不需要手动设置阈值,也不需要对分布进行假设:主要参数只有风险,控制误报的数量。我们的方法可以用于异常值检测,但更普遍的是用于自动设置阈值,使其在许多情况下都很有用。我们还在各种现实世界的数据集上实验了我们的算法,以证实其合理性和有效性。
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Anomaly Detection in Streams with Extreme Value Theory
Anomaly detection in time series has attracted considerable attention due to its importance in many real-world applications including intrusion detection, energy management and finance. Most approaches for detecting outliers rely on either manually set thresholds or assumptions on the distribution of data according to Chandola, Banerjee and Kumar. Here, we propose a new approach to detect outliers in streaming univariate time series based on Extreme Value Theory that does not require to hand-set thresholds and makes no assumption on the distribution: the main parameter is only the risk, controlling the number of false positives. Our approach can be used for outlier detection, but more generally for automatically setting thresholds, making it useful in wide number of situations. We also experiment our algorithms on various real-world datasets which confirm its soundness and efficiency.
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