Ridge Regression and Provable Deterministic Ridge Leverage Score Sampling

NeurIPS 2018 Shannon Mccurdy

Ridge leverage scores provide a balance between low-rank approximation and regularization, and are ubiquitous in randomized linear algebra and machine learning. Deterministic algorithms are also of interest in the moderately big data regime, because deterministic algorithms provide interpretability to the practitioner by having no failure probability and always returning the same results... (read more)

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