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Unconstrained submodular maximization with modular costs

Authors :
Tianyuan Jin
Xiaokui Xiao
Yu Yang
Jieming Shi
Renchi Yang
Keke Huang
Source :
Proceedings of the VLDB Endowment. 14:1756-1768
Publication Year :
2021
Publisher :
Association for Computing Machinery (ACM), 2021.

Abstract

Given a set V , the problem of unconstrained submodular maximization with modular costs (USM-MC) asks for a subset S ⊆ V that maximizes f ( S ) - c ( S ), where f is a non-negative, monotone, and submodular function that gauges the utility of S , and c is a non-negative and modular function that measures the cost of S. This problem finds applications in numerous practical scenarios, such as profit maximization in viral marketing on social media. This paper presents ROI-Greedy, a polynomial time algorithm for USM-MC that returns a solution S satisfying [EQUATION], where S * is the optimal solution to USM-MC. To our knowledge, ROI-Greedy is the first algorithm that provides such a strong approximation guarantee. In addition, we show that this worst-case guarantee is tight , in the sense that no polynomial time algorithm can ensure [EQUATION], for any ϵ > 0. Further, we devise a non-trivial extension of ROI-Greedy to solve the profit maximization problem, where the precise value of f ( S ) for any set S is unknown and can only be approximated via sampling. Extensive experiments on benchmark datasets demonstrate that ROI-Greedy significantly outperforms competing methods in terms of the tradeoff between efficiency and solution quality.

Details

ISSN :
21508097
Volume :
14
Database :
OpenAIRE
Journal :
Proceedings of the VLDB Endowment
Accession number :
edsair.doi...........3068d6d46e181914bbb4b44f3f5f93c4