带有事件的时间序列的用户驱动错误检测

Kim-Hung Le, Paolo Papotti
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引用次数: 6

摘要

异常在时间序列数据中是普遍存在的,比如传感器读数。现有的异常检测方法无法区分代表数据错误的异常(如不正确的传感器读数)和值得注意的事件(如土壤监测中的浇水动作)。此外,这些检测方法的质量性能高度依赖于配置参数,这些参数是特定于数据集的。在这项工作中,我们利用主动学习来检测单个解决方案中的错误和事件,旨在最大限度地减少用户交互。对于这种联合检测,我们引入了一种利用邻域和概率分类的非参数概念准确检测和标记异常的算法。给定期望的质量,然后将分类的置信度用作主动学习算法的终止条件。在真实数据集和合成数据集上的实验表明,我们的方法在一个数据序列中标记2到5个点,在检测错误方面达到了80%以上的f分。我们还展示了与最先进的异常检测方法相比,我们的解决方案的优越性。最后,我们展示了我们的错误检测方法在下游数据修复算法中的积极影响。
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User-driven Error Detection for Time Series with Events
Anomalies are pervasive in time series data, such as sensor readings. Existing methods for anomaly detection cannot distinguish between anomalies that represent data errors, such as incorrect sensor readings, and notable events, such as the watering action in soil monitoring. In addition, the quality performance of such detection methods highly depends on the configuration parameters, which are dataset specific. In this work, we exploit active learning to detect both errors and events in a single solution that aims at minimizing user interaction. For this joint detection, we introduce an algorithm that accurately detects and labels anomalies with a non-parametric concept of neighborhood and probabilistic classification. Given a desired quality, the confidence of the classification is then used as termination condition for the active learning algorithm. Experiments on real and synthetic datasets demonstrate that our approach achieves F-score above 80% in detecting errors by labeling 2 to 5 points in one data series. We also show the superiority of our solution compared to the state-of-the-art approaches for anomaly detection. Finally, we demonstrate the positive impact of our error detection methods in downstream data repairing algorithms.
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