Adaptive and Dynamic Multi-Resolution Hashing for Pairwise Summations
Abstract
In this paper, we propose Adam-Hash: an adaptive and dynamic multi-resolution hashing data-structure for fast pairwise summation estimation. Given a data-set , a binary function , and a point , the Pairwise Summation Estimate . For any given data-set , we need to design a data-structure such that given any query point , the data-structure approximately estimates in time that is sub-linear in . Prior works on this problem have focused exclusively on the case where the data-set is static, and the queries are independent. In this paper, we design a hashing-based PSE data-structure which works for the more practical \textit{dynamic} setting in which insertions, deletions, and replacements of points are allowed. Moreover, our proposed Adam-Hash is also robust to adaptive PSE queries, where an adversary can choose query depending on the output from previous queries .
Keywords
Cite
@article{arxiv.2212.11408,
title = {Adaptive and Dynamic Multi-Resolution Hashing for Pairwise Summations},
author = {Lianke Qin and Aravind Reddy and Zhao Song and Zhaozhuo Xu and Danyang Zhuo},
journal= {arXiv preprint arXiv:2212.11408},
year = {2022}
}
Comments
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