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Large-Scale Unusual Time Series Detection

机译:大规模异常时间序列检测

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It is becoming increasingly common for organizations to collect very large amounts of data over time, and to need to detect unusual or anomalous time series. For example, Yahoo has banks of mail servers that are monitored over time. Many measurements on server performance are collected every hour for each of thousands of servers. We wish to identify servers that are behaving unusually. We compute a vector of features on each time series, measuring characteristics of the series. The features may include lag correlation, strength of seasonality, spectral entropy, etc. Then we use a principal component decomposition on the features, and use various bivariate outlier detection methods applied to the first two principal components. This enables the most unusual series, based on their feature vectors, to be identified. The bivariate outlier detection methods used are based on highest density regions and α-hulls.
机译:随着时间的推移,组织收集大量数据并需要检测异常或异常的时间序列变得越来越普遍。例如,Yahoo具有随时间监视的邮件服务器库。每小时都会为数千个服务器中的服务器性能收集许多衡量指标。我们希望确定行为异常的服务器。我们计算每个时间序列上的特征向量,以测量该序列的特征。这些特征可能包括滞后相关性,季节性强度,频谱熵等。然后,我们对特征进行主成分分解,并对前两个主成分使用各种双变量离群值检测方法。这使得能够基于其特征向量来识别最不寻常的系列。所使用的双变量离群值检测方法基于最高密度区域和α壳。

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