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Random Subspace Learning Approach to High-Dimensional Outliers Detection

机译:高维离群值检测的随机子空间学习方法

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We introduce and develop a novel approach to outlier detection based on adaptation of random subspace learning. Our proposed method handles both high-dimension low-sample size and traditional low-dimensional high-sample size datasets. Essentially, we avoid the computational bottleneck of techniques like Minimum Covariance Determinant (MCD) by computing the needed determinants and associated measures in much lower dimensional subspaces. Both theoretical and computational development of our approach reveal that it is computationally more efficient than the regularized methods in high-dimensional low-sample size, and often competes favorably with existing methods as far as the percentage of correct outlier detection are concerned.
机译:我们介绍并开发了一种基于随机子空间学习自适应的离群值检测新方法。我们提出的方法可处理高维低样本量数据集和传统低维高样本量数据集。本质上,我们通过在低维子空间中计算所需的行列式和相关度量,避免了诸如最小协方差行列式(MCD)之类的技术的计算瓶颈。我们方法的理论和计算发展都表明,在高维低样本量方面,该方法在计算上比正则化方法更有效,并且就正确的异常值检测百分比而言,它通常与现有方法竞争良好。

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