DSCGLGApr 23, 2020

Non-Adaptive Adaptive Sampling on Turnstile Streams

arXiv:2004.10969v126 citations
AI Analysis

This work addresses data summarization challenges in streaming environments for applications in big data and machine learning, offering significant improvements over prior methods.

The paper tackles the problem of performing adaptive sampling in a one-pass streaming model on turnstile streams, achieving space complexity poly(d, k, log n) and enabling applications like column subset selection and subspace approximation with relative-error guarantees. It also provides tight lower bounds for volume maximization, matching upper bounds in both turnstile and row-arrival models.

Adaptive sampling is a useful algorithmic tool for data summarization problems in the classical centralized setting, where the entire dataset is available to the single processor performing the computation. Adaptive sampling repeatedly selects rows of an underlying matrix $\mathbf{A}\in\mathbb{R}^{n\times d}$, where $n\gg d$, with probabilities proportional to their distances to the subspace of the previously selected rows. Intuitively, adaptive sampling seems to be limited to trivial multi-pass algorithms in the streaming model of computation due to its inherently sequential nature of assigning sampling probabilities to each row only after the previous iteration is completed. Surprisingly, we show this is not the case by giving the first one-pass algorithms for adaptive sampling on turnstile streams and using space $\text{poly}(d,k,\log n)$, where $k$ is the number of adaptive sampling rounds to be performed. Our adaptive sampling procedure has a number of applications to various data summarization problems that either improve state-of-the-art or have only been previously studied in the more relaxed row-arrival model. We give the first relative-error algorithms for column subset selection, subspace approximation, projective clustering, and volume maximization on turnstile streams that use space sublinear in $n$. We complement our volume maximization algorithmic results with lower bounds that are tight up to lower order terms, even for multi-pass algorithms. By a similar construction, we also obtain lower bounds for volume maximization in the row-arrival model, which we match with competitive upper bounds. See paper for full abstract.

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