Practical and Parallelizable Algorithms for Non-Monotone Submodular Maximization with Size Constraint
–arXiv.org Artificial Intelligence
We present combinatorial and parallelizable algorithms for maximization of a submodular function, not necessarily monotone, with respect to a size constraint. We improve the best approximation factor achieved by an algorithm that has optimal adaptivity and nearly optimal query complexity to $0.193 - \varepsilon$. The conference version of this work mistakenly employed a subroutine that does not work for non-monotone, submodular functions. In this version, we propose a fixed and improved subroutine to add a set with high average marginal gain, \threseq, which returns a solution in $O( \log(n) )$ adaptive rounds with high probability. Moreover, we provide two approximation algorithms. The first has approximation ratio $1/6 - \varepsilon$, adaptivity $O( \log (n) )$, and query complexity $O( n \log (k) )$, while the second has approximation ratio $0.193 - \varepsilon$, adaptivity $O( \log^2 (n) )$, and query complexity $O(n \log (k))$. Our algorithms are empirically validated to use a low number of adaptive rounds and total queries while obtaining solutions with high objective value in comparison with state-of-the-art approximation algorithms, including continuous algorithms that use the multilinear extension.
arXiv.org Artificial Intelligence
Oct-21-2022
- Country:
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- Texas > Brazos County
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- California > Santa Clara County
- Palo Alto (0.04)
- Texas > Brazos County
- Europe > United Kingdom
- England > Cambridgeshire > Cambridge (0.04)
- North America > United States
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