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Concept drift robust adaptive novelty detection for data streams

机译:数据流的概念漂移鲁棒自适应新颖性检测

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In this paper we study the performance of two original adaptive unsupervised novelty detection methods (NDMs) on data with concept drift. Newly, the concept drift is considered as a challenging data imbalance that should be ignored by the NDMs, and only system changes and outliers represent novelty. The field of application for such NDMs is broad. For example, the method can be used as a supportive method for real-time system fault detection, for onset detection of events in biomedical signals, in monitoring of nonlinearly controlled processes, for event driven automated trading, etc. The two newly studied methods are the error and learning based novelty detection (ELBND) and the learning entropy (LE) based detection. These methods use both the error and weight increments of a (supervised) learning model. Here, we study these methods with normalized least-mean squares (NLMS) adaptive filter, and while the NDMs were studied on various real life tasks, newly, we carry out the study on two types of data streams with concept drift to analyze the general ability for unsupervised novelty detection. The two data streams, one with system changes, second with outliers, represent different novelty scenarios to demonstrate the performance of the proposed NDMs with concept drifts in data. Both tested NDMs work as a feature extractor. Thus, a classification framework is used for the evaluation of the obtained features and NDM benchmarking, where two other NDMs, one based on the adaptive model plain error, second using the sample entropy (SE), are used as the reference for the comparison to the proposed methods. The results show that both newly studied NDMs are superior to the merely use of the plain error of adaptive model and also to the sample entropy based detection while they are robust against the concept drift occurrence. (C) 2018 Elsevier B.V. All rights reserved.
机译:在本文中,我们研究了两种原始的自适应无监督新颖性检测方法(NDM)在具有概念漂移的数据上的性能。最近,概念漂移被认为是具有挑战性的数据失衡,应由NDM忽略,只有系统更改和异常值代表新颖性。这种NDM的应用领域很广泛。例如,该方法可用作实时系统故障检测,生物医学信号中事件的开始检测,非线性控制过程的监视,事件驱动的自动交易等的辅助方法。这两种新研究的方法是基于错误和学习的新颖性检测(ELBND)和基于学习熵(LE)的检测。这些方法使用(监督的)学习模型的误差和权重增量。在这里,我们使用归一化最小均方(NLMS)自适应滤波器研究这些方法,并且在针对各种现实生活任务研究NDM的同时,我们又对具有概念漂移的两种类型的数据流进行了研究,以分析一般情况。无监督新颖性检测的能力。这两个数据流,一个具有系统更改,第二个具有离群值,代表了不同的新颖性场景,以证明所提出的NDM的性能随着数据中的概念漂移而变化。两种经过测试的NDM都可以用作特征提取器。因此,使用分类框架评估获得的特征并进行NDM基准测试,其中另外两个NDM(一个基于自适应模型纯误差),第二个NDM使用样本熵(SE)作为与以下对象进行比较的参考建议的方法。结果表明,这两个新近研究的NDM都优于仅使用自适应模型的普通误差,并且还优于基于样本熵的检测,同时它们对概念漂移的发生具有鲁棒性。 (C)2018 Elsevier B.V.保留所有权利。

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