Turnstile Streaming Algorithms Might (Still) as Well Be Linear Sketches, for Polynomial-Length Streams
Cheng Jiang, Yinchen Liu, Huacheng Yu

TL;DR
This paper proves that polynomial-length turnstile streaming algorithms can be simulated by linear sketches, extending the equivalence known for longer streams and using Fourier analysis and additive combinatorics.
Contribution
It establishes that polynomial-length turnstile algorithms are essentially linear sketches, providing new bounds and a novel Fourier-analytic proof approach.
Findings
Polynomial-length turnstile algorithms can be simulated by linear sketches.
The analysis reveals low-dimensional Fourier frequency sensitivity of such algorithms.
New lower bounds for polynomial-length streams are derived from the results.
Abstract
A fundamental question in streaming complexity is whether every space-efficient turnstile algorithm is implicitly a linear sketch. The landmark work of Li, Nguyen, and Woodruff [LNW14] established an equivalence between the two, but their reduction requires a stream length that is at least doubly exponential in the dimension . In the opposite direction, results by Kallaugher and Price [KP20] demonstrate a separation for streams of linear length, showing that the equivalence does not hold in general. The most natural and practically relevant regime -- polynomial-length streams -- has therefore remained open. We show that polynomial-length turnstile algorithms admit linear-sketch simulations. More precisely, if a turnstile algorithm uses bits of space and succeeds on all streams of length , then on final vectors with , its output can be…
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