Maximizing Sums of Non-monotone Submodular and Linear Functions: Understanding the Unconstrained Case
April 07, 2022 Β· Declared Dead Β· π Embedded Systems and Applications
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Authors
Kobi Bodek, Moran Feldman
arXiv ID
2204.03412
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.DM
Citations
6
Venue
Embedded Systems and Applications
Last Checked
4 months ago
Abstract
Motivated by practical applications, recent works have considered maximization of sums of a submodular function $g$ and a linear function $\ell$. Almost all such works, to date, studied only the special case of this problem in which $g$ is also guaranteed to be monotone. Therefore, in this paper we systematically study the simplest version of this problem in which $g$ is allowed to be non-monotone, namely the unconstrained variant, which we term Regularized Unconstrained Submodular Maximization (RegularizedUSM). Our main algorithmic result is the first non-trivial guarantee for general RegularizedUSM. For the special case of RegularizedUSM in which the linear function $\ell$ is non-positive, we prove two inapproximability results, showing that the algorithmic result implied for this case by previous works is not far from optimal. Finally, we reanalyze the known Double Greedy algorithm to obtain improved guarantees for the special case of RegularizedUSM in which the linear function $\ell$ is non-negative; and we complement these guarantees by showing that it is not possible to obtain (1/2, 1)-approximation for this case (despite intuitive arguments suggesting that this approximation guarantee is natural).
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