posted on 2008-06-01, 00:00authored byAnupam Gupta, Aaron Roth, Grant Schoenebeck, Kunal Talwar
Constrained submodular maximization problems have long been studied, with near-optimal results
known under a variety of constraints when the submodular function is monotone. The case of non-
monotone submodular maximization is less understood: the first approximation algorithms even for the
unconstrainted setting were given by Feige et al. (FOCS ’07). More recently, Lee et al. (STOC ’09,
APPROX ’09) show how to approximately maximize non-monotone submodular functions when the
constraints are given by the intersection of p matroid constraints; their algorithm is based on local-
search procedures that consider p-swaps, and hence the running time may be n
(p), implying their
algorithm is polynomial-time only for constantly many matroids.
In this paper, we give algorithms that work for p-independence systems (which generalize constraints
given by the intersection of p matroids), where the running time is poly(n, p). Our algorithm essentially
reduces the non-monotone maximization problem to multiple runs of the greedy algorithm previously
used in the monotone case. Our idea of using existing algorithms for monotone functions to solve
the non-monotone case also works for maximizing a submodular function with respect to a knapsack
constraint : we get a simple greedy-based constant-factor approximation for this problem.
With these simpler algorithms, we are able to adapt our approach to constrained non-monotone
submodular maximization to the (online) secretary setting, where elements arrive one at a time in
random order, and the algorithm must make irrevocable decisions about whether or not to select each
element as it arrives. We give constant approximations in this secretary setting when the algorithm is
constrained subject to a uniform matroid or a partition matroid, and give an O(log k) approximation
when it is constrained by a general matroid of rank k.