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Streaming Submodular Maximization under a kk-Set System Constraint

International Conference on Machine Learning (ICML), 2020
Abstract

In this paper, we propose a novel framework that converts streaming algorithms for monotone submodular maximization into streaming algorithms for non-monotone submodular maximization. This reduction readily leads to the currently tightest deterministic approximation ratio for submodular maximization subject to a kk-matchoid constraint. Moreover, we propose the first streaming algorithm for monotone submodular maximization subject to kk-extendible and kk-set system constraints. Together with our proposed reduction, we obtain O(klogk)O(k\log k) and O(k2logk)O(k^2\log k) approximation ratio for submodular maximization subject to the above constraints, respectively. We extensively evaluate the empirical performance of our algorithm against the existing work in a series of experiments including finding the maximum independent set in randomly generated graphs, maximizing linear functions over social networks, movie recommendation, Yelp location summarization, and Twitter data summarization.

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