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Outlier Detection in Data Streams — A Comparative Study of Selected Methods

机译:数据流中的异常检测 - 所选方法的比较研究

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Outlier detection is an increasingly important and intensively developing area of research. This paper focuses on the problem of outlier detection in data streams. It presents a performance comparison of selected statistical algorithms: AutoRegressive Integrated Moving Average (ARIMA), Exponential Smoothing State Space Model (ETS), Seasonal Hybrid Extreme Studentized Deviation (SHESD), Non-parametric methodology (NMV), and Chen-Liu method (CHL). Based on four data streams from the Kaggle Repository and DataHub Repository, the study provides results concerning the number of outliers detected by each algorithm and the algorithms’ operation times. The experiments were performed on data streams of different lengths (from a few hundred to 1200 records), characterized by the presence of different types of outliers.
机译:异常值检测是一个越来越重要和强烈的发展领域。 本文重点介绍数据流中异常检测的问题。 它提出了所选统计算法的性能比较:自回归综合移动平均(ARIMA),指数平滑状态空间模型(ETS),季节性混合极端学生偏差(SHESD),非参数方法(NMV)和Chen-Liu方法( chl)。 基于来自Kaggle存储库和DataHub存储库的四个数据流,该研究提供了关于每个算法检测到的异常值的数量和算法的操作时间的结果。 对不同长度的数据流(从几百至1200条记录)进行实验,其特征在于存在不同类型的异常值。

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