Adversarial Robustness on Insertion-Deletion Streams
Elena Gribelyuk, Honghao Lin, David P. Woodruff, Huacheng Yu, Samson Zhou

TL;DR
This paper demonstrates that adversarially robust algorithms for insertion-deletion streams can operate with significantly less space than previously conjectured, using a novel framework to approximate various functions.
Contribution
It introduces a new estimator-corrector-learner framework that achieves sublinear space for robust algorithms, refuting prior conjectures about linear space requirements.
Findings
Robust $F_2$ approximation is achievable in polylogarithmic space.
The framework extends to symmetric functions with triangle inequality, including $L_1$, $F_0$, and M-estimators.
Achieves $L_2$ heavy hitters detection with sublinear space.
Abstract
We study adversarially robust algorithms for insertion-deletion (turnstile) streams, where future updates may depend on past algorithm outputs. While robust algorithms exist for insertion-only streams with only a polylogarithmic overhead in memory over non-robust algorithms, it was widely conjectured that turnstile streams of length polynomial in the universe size require space linear in . We refute this conjecture, showing that robustness can be achieved using space which is significantly sublinear in . Our framework combines multiple linear sketches in a novel estimator-corrector-learner framework, yielding the first insertion-deletion algorithms that approximate: (1) the second moment up to a -factor in polylogarithmic space, (2) any symmetric function with an -approximate triangle inequality up to a …
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