Submodular maximization is one of the central topics in combinatorial
optimization. It has found numerous applications in the real world. In the past
decades, a series of algorithms have been proposed for this problem. However,
most of the state-of-the-art algorithms are randomized. There remain
non-negligible gaps with respect to approximation ratios between deterministic
and randomized algorithms in submodular maximization.
In this paper, we propose deterministic algorithms with improved
approximation ratios for non-monotone submodular maximization. Specifically,
for the matroid constraint, we provide a deterministic 0.283βo(1)
approximation algorithm, while the previous best deterministic algorithm only
achieves a 1/4 approximation ratio. For the knapsack constraint, we provide a
deterministic 1/4 approximation algorithm, while the previous best
deterministic algorithm only achieves a 1/6 approximation ratio. For the
linear packing constraints with large widths, we provide a deterministic
1/6βΟ΅ approximation algorithm. To the best of our knowledge, there is
currently no deterministic approximation algorithm for the constraints.Comment: 25 pages; added a new result about the linear packing constraint