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Theoretical Analysis of Sparse Subspace Clustering with Missing Entries

机译:缺少条目的稀疏子空间聚类的理论分析

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Sparse Subspace Clustering (SSC) is a popular unsupervised machine learning method for clustering data lying close to an unknown union of low-dimensional linear subspaces; a problem with numerous applications in pattern recognition and computer vision. Even though the behavior of SSC for complete data is by now well-understood, little is known about its theoretical properties when applied to data with missing entries. In this paper we give theoretical guarantees for SSC with incomplete data, and provide theoretical evidence that projecting the zero-filled data onto the observation pattern of the point being expressed can lead to substantial improvement in performance; a phenomenon already known experimentally. The main insight of our analysis is that even though this projection induces additional missing entries, this is counterbalanced by the fact that the projected and zero-filled data are in effect incomplete points associated with the union of the corresponding projected subspaces, with respect to which the point being expressed is complete. The significance of this phenomenon potentially extends to the entire class of self-expressive methods.
机译:稀疏子空间聚类(SSC)是一种流行的无监督机器学习方法,用于聚类位于低维线性子空间的未知并集附近的数据。模式识别和计算机视觉中大量应用的问题。尽管到目前为止,对于完整数据的SSC行为已被很好地理解,但当将其应用于缺少条目的数据时,对其理论特性的了解却很少。在本文中,我们为数据不完整的SSC提供了理论保证,并提供了理论证据,即将零填充数据投影到所表示点的观察图样上可以大大改善性能;实验已经知道的现象。我们的分析的主要见解是,即使此投影引起了其他缺失条目,但由于投影和零填充数据实际上是与相应投影子空间的并集相关联的不完整点,这一事实抵消了这一点。表示的观点是完整的。这种现象的重要性可能会扩展到整个类型的自我表达方法。

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