Large-scale subspace clustering using sketching and validation

6 Oct 2015Panagiotis A. TraganitisKonstantinos SlavakisGeorgios B. Giannakis

The nowadays massive amounts of generated and communicated data present major challenges in their processing. While capable of successfully classifying nonlinearly separable objects in various settings, subspace clustering (SC) methods incur prohibitively high computational complexity when processing large-scale data... (read more)

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