On Maximizing Sums of Non-monotone Submodular and Linear Functions

Abstract

We study the problem of Regularized Unconstrained Submodular Maximization (RegularizedUSM) as defined by Bodek and Feldman [BF22]. In this problem, you are given a non-monotone non-negative submodular function f:2 N R 0 and a linear function :2 N R over the same ground set N, and the objective is to output a set T⊂eq N approximately maximizing the sum f(T)+(T). Specifically, an algorithm is said to provide an (α,β)-approximation for RegularizedUSM if it outputs a set T such that E[f(T)+(T)] S⊂eq N[α · f(S)+β· (S)]. We also study the setting where S and T are subject to a matroid constraint, which we refer to as Regularized Constrained Submodular Maximization (RegularizedCSM). For both RegularizedUSM and RegularizedCSM, we provide improved (α,β)-approximation algorithms for the cases of non-positive , non-negative , and unconstrained . In particular, for the case of unconstrained , we are the first to provide nontrivial (α,β)-approximations for RegularizedCSM, and the α we obtain for RegularizedUSM is superior to that of [BF22] for all β∈ (0,1). In addition to approximation algorithms, we provide improved inapproximability results for all of the aforementioned cases. In particular, we show that the α our algorithm obtains for RegularizedCSM with unconstrained is tight for β ee+1. We also show 0.478-inapproximability for maximizing a submodular function where S and T are subject to a cardinality constraint, improving the long-standing 0.491-inapproximability result due to Gharan and Vondrak [GV10].

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