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Subspace Clustering with Irrelevant Features via Robust Dantzig Selector

机译:通过稳健的Dantzig选择器进行具有不相关功能的子空间聚类

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This paper considers the subspace clustering problem where the data contains irrelevant or corrupted features. We propose a method termed "robust Dantzig selector" which can successfully identify the clustering structure even with the presence of irrelevant features. The idea is simple yet powerful: we replace the inner product by its robust counterpart, which is insensitive to the irrelevant features given an upper bound of the number of irrelevant features. We establish theoretical guarantees for the algorithm to identify the correct subspace, and demonstrate the effectiveness of the algorithm via numerical simulations. To the best of our knowledge, this is the first method developed to tackle subspace clustering with irrelevant features.
机译:本文考虑了子空间聚类问题,其中数据包含不相关或已损坏的特征。我们提出了一种称为“鲁棒的Dantzig选择器”的方法,即使存在不相关的特征,该方法也可以成功地识别聚类结构。这个想法很简单,但功能强大:我们将内部产品替换为功能强大的对应产品,鉴于不相关特征的数量上限,该产品对不相关特征不敏感。我们为算法识别正确的子空间建立了理论保证,并通过数值模拟证明了该算法的有效性。据我们所知,这是为解决具有不相关特征的子空间聚类而开发的第一种方法。

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