Improved Algorithms for Maximum Coverage in Dynamic and Random Order Streams
Abstract
The maximum coverage problem is to select sets from a collection of sets such that the cardinality of the union of the selected sets is maximized. We consider -approximation algorithms for this NP-hard problem in three standard data stream models. 1. {\em Dynamic Model.} The stream consists of a sequence of sets being inserted and deleted. Our multi-pass algorithm uses space. The best previous result (Assadi and Khanna, SODA 2018) used space. While both algorithms use passes, our analysis shows that when is a constant, it is possible to reduce the number of passes by a factor without incurring additional space. 2. {\em Random Order Model.} In this model, there are no deletions and the sets forming the instance are uniformly randomly permuted to form the input stream. We show that a single pass and space suffices for arbitrary small constant . The best previous result, by Warneke et al.~(ESA 2023), used space. 3. {\em Insert-Only Model.} Lastly, our results, along with numerous previous results, use a sub-sampling technique introduced by McGregor and Vu (ICDT 2017) to sparsify the input instance. We explain how this technique and others used in the paper can be implemented such that the amortized update time of our algorithm is polylogarithmic. This also implies an improvement of the state-of-the-art insert only algorithms in terms of the update time: update time suffices whereas the best previous result by Jaud et al.~(SEA 2023) required update time that was linear in .
Cite
@article{arxiv.2403.14087,
title = {Improved Algorithms for Maximum Coverage in Dynamic and Random Order Streams},
author = {Amit Chakrabarti and Andrew McGregor and Anthony Wirth},
journal= {arXiv preprint arXiv:2403.14087},
year = {2024}
}