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Smart Sampling: A Novel Unsupervised Boosting Approach for Outlier Detection

机译:智能采样:一种新型无监督的促进促进促进促进促进方法

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While various ensemble algorithms have been proposed for supervised ensembles or clustering ensembles, there are few ensemble based approaches for outlier detection. The main challenge in this context is the lack of knowledge about the accuracy of the outlier detectors. Hence, none of the proposed approaches focused on sequential boosting techniques. In this paper for the first time we propose a novel boosting algorithm for outlier detection called BSS, where we sequentially improve the accuracy of each ensemble detector in an unsupervised manner. We discuss the effectiveness of our approach in terms of bias-variance tradeoff. Furthermore, an extended version of BSS (called DBSS) is proposed to introduce a novel source of diversity in outlier ensemble modeling. DBSS is used to analyze the effect of changing the input parameter of BSS on its detection accuracy. Our experimental results on both synthetic and real data sets demonstrate that our approaches outperform the two state-of-the-art outlier ensemble algorithms and benefit from bias reduction. In addition, our BSS approach is robust with respect to the changing input parameter. Since each detector in our proposed BSS/DBSS is only a subset of the whole dataset, our both techniques are well suited to application environments with limited memory processors (e.g., wireless sensor networks).
机译:虽然不同的合奏算法已经提出了监督合奏或群集合奏,也有异常检测几个合奏为基础的方法。在这方面面临的主要挑战是缺乏对异常检测的准确性知识。因此,没有一个提出的方法集中在连续提升技术。在本文中首次提出了称为BSS异常检测,在那里我们顺序地改善以无监督的方式各集成检测器的准确度的新的boosting算法。我们讨论了偏差 - 方差权衡的方面我们的方法的有效性。另外,BSS的扩展版本(称为DBSS)提出了在异常值整体建模引入多样性的一种新的源。 DBSS用于分析改变BSS的输入参数在它的检测精度的效果。我们对合成和真实数据集实验结果表明,我们的方法优于国家的最先进的异常合奏的算法,并受益于偏置减少两个。此外,我们的BSS的做法是相对于不断变化的输入参数稳健。因为在我们提出的BSS / DBSS每个检测器仅仅是整个数据集的子集,我们的两种技术很适合于具有有限内存的处理器(例如,无线传感器网络)的应用环境。

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