English

Linear-Time Algorithms for Adaptive Submodular Maximization

Machine Learning 2020-07-09 v1 Machine Learning

Abstract

In this paper, we develop fast algorithms for two stochastic submodular maximization problems. We start with the well-studied adaptive submodular maximization problem subject to a cardinality constraint. We develop the first linear-time algorithm which achieves a (11/eϵ)(1-1/e-\epsilon) approximation ratio. Notably, the time complexity of our algorithm is O(nlog1ϵ)O(n\log\frac{1}{\epsilon}) (number of function evaluations) which is independent of the cardinality constraint, where nn is the size of the ground set. Then we introduce the concept of fully adaptive submodularity, and develop a linear-time algorithm for maximizing a fully adaptive submoudular function subject to a partition matroid constraint. We show that our algorithm achieves a 11/eϵ42/e2ϵ\frac{1-1/e-\epsilon}{4-2/e-2\epsilon} approximation ratio using only O(nlog1ϵ)O(n\log\frac{1}{\epsilon}) number of function evaluations.

Keywords

Cite

@article{arxiv.2007.04214,
  title  = {Linear-Time Algorithms for Adaptive Submodular Maximization},
  author = {Shaojie Tang},
  journal= {arXiv preprint arXiv:2007.04214},
  year   = {2020}
}