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Self-adaptive statistical process control for anomaly detection in time series

机译:时间序列异常检测的自适应统计过程控制

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Anomaly detection in time series has become a widespread problem in the areas such as intrusion detection and industrial process monitoring. Major challenges in anomaly detection systems include unknown data distribution, control limit determination, multiple parameters, training data and fuzziness of 'anomaly'. Motivated by these considerations, a novel model is developed, whose salient feature is a synergistic combination of statistical and fuzzy set-based techniques. We view anomaly detection problem as a certain statistical hypothesis testing. Meanwhile, 'anomaly' itself includes fuzziness, therefore, can be described with fuzzy sets, which bring a facet of robustness to the overall scheme. Intensive fuzzification is engaged and plays an important role in the successive step of hypothesis testing. Because of intensive fuzzification, the proposed algorithm is distribution-free and self-adaptive, which solves the limitation of control limit and multiple parameters. The framework is realized in an unsupervised mode, leading to great portability and scalability. The performance is assessed in terms of ROC curve on university of California Riverside repository. A series of experiments show that the proposed approach can significantly increase the AUC, while the false alarm rate is improved. In particular, it is capable of detecting anomalies at the earliest possible time. (C) 2016 Elsevier Ltd. All rights reserved.
机译:时间序列中的异常检测已成为入侵检测和工业过程监控等领域的普遍问题。异常检测系统的主要挑战包括未知数据分布,控制极限确定,多个参数,训练数据和“异常”的模糊性。基于这些考虑,开发了一种新颖的模型,其显着特征是统计和基于模糊集的技术的协同组合。我们将异常检测问题视为某种统计假设检验。同时,“异常”本身包括模糊性,因此可以用模糊集描述,这给整个方案带来了鲁棒性。进行密集的模糊化,并在假设检验的后续步骤中发挥重要作用。由于密集的模糊化,所提出的算法是无分布且自适应的,解决了控制极限和多个参数的局限性。该框架是在非监督模式下实现的,从而带来了极大的可移植性和可伸缩性。根据加州大学河滨存储库中的ROC曲线评估性能。一系列实验表明,该方法可以显着提高AUC,同时提高虚警率。特别是,它能够尽早检测到异常。 (C)2016 Elsevier Ltd.保留所有权利。

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