On Deterministic Sketching and Streaming for Sparse Recovery and Norm Estimation
Jelani Nelson, Huy Nguyen, David P. Woodruff

TL;DR
This paper investigates deterministic linear sketches for sparse recovery and norm estimation, providing new bounds, equivalences, and algorithms that improve upon previous randomized and deterministic results.
Contribution
It establishes equivalences between problems, introduces improved measurement bounds, and provides new lower bounds and tight bounds for deterministic sparse recovery and norm estimation.
Findings
Linf/l1 sparse recovery and inner product estimation are equivalent.
New upper bounds on measurements using incoherent matrices and fast transforms.
A new lower bound on measurements for l1/l1 sparse recovery.
Abstract
We study classic streaming and sparse recovery problems using deterministic linear sketches, including l1/l1 and linf/l1 sparse recovery problems (the latter also being known as l1-heavy hitters), norm estimation, and approximate inner product. We focus on devising a fixed matrix A in R^{m x n} and a deterministic recovery/estimation procedure which work for all possible input vectors simultaneously. Our results improve upon existing work, the following being our main contributions: * A proof that linf/l1 sparse recovery and inner product estimation are equivalent, and that incoherent matrices can be used to solve both problems. Our upper bound for the number of measurements is m=O(eps^{-2}*min{log n, (log n / log(1/eps))^2}). We can also obtain fast sketching and recovery algorithms by making use of the Fast Johnson-Lindenstrauss transform. Both our running times and number of…
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