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Lifting Linear Sketches: Optimal Bounds and Adversarial Robustness


Speaker

Honghao Lin(林虹灏) ,Carnegie Mellon University

Time

2025-05-29 16:00:00 ~ 2025-05-29 17:00:00

Location

上海交通大学软件大楼专家楼1319会议室

Host

张驰豪

Abstract

We introduce a novel technique for ``lifting'' dimension lower bounds for linear sketches in the real-valued setting to dimension lower bounds for linear sketches with polynomially-bounded integer entries when the input is a polynomially-bounded integer vector. Using this technique, we obtain the first optimal sketching lower bounds for discrete inputs in a data stream, for classical problems such as approximating the frequency moments, estimating the operator norm, and compressed sensing. Additionally, we lift the adaptive attack of Hardt and Woodruff (STOC, 2013) for breaking any real-valued linear sketch via a sequence of real-valued queries, and show how to obtain an attack on any integer-valued linear sketch using integer-valued queries. This shows that there is no linear sketch in a data stream with insertions and deletions that is adversarially robust for approximating any $L_p$ norm of the input, resolving a central open question for adversarially robust streaming algorithms. To do so, we introduce a new pre-processing technique of independent interest which, given an integer-valued linear sketch, increases the dimension of the sketch by only a constant factor in order to make the orthogonal lattice to its row span smooth. This pre-processing then enables us to leverage results in lattice theory on discrete Gaussian distributions and reason that efficient discrete sketches imply efficient continuous sketches. Our work resolves open questions from the Banff '14 and '17 workshops on Communication Complexity and Applications, as well as the STOC '21 and FOCS '23 workshops on adaptivity and robustness.
 
Based on joint work with Elena Gribelyuk, David P. Woodruff, Huacheng Yu, and Samson Zhou, to appear at STOC 2025.


Bio

Honghao Lin is an incoming fifth-year Ph.D. student in the Computer Science Department at Carnegie Mellon University, advised by David P. Woodruff. His research interests lie broadly in theoretical computer science, with a current focus on algorithms for massive datasets and their connections to machine learning. Prior to joining CMU, he graduated in 2020 from the ACM Honors Class at Shanghai Jiao Tong University.


© John Hopcroft Center for Computer Science, Shanghai Jiao Tong University
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