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AAAI 2023

Improved Algorithm for Regret Ratio Minimization in Multi-Objective Submodular Maximization

Conference Paper AAAI Technical Track on Search and Optimization Artificial Intelligence

Abstract

Submodular maximization has attracted extensive attention due to its numerous applications in machine learning and artificial intelligence. Many real-world problems require maximizing multiple submodular objective functions at the same time. In such cases, a common approach is to select a representative subset of Pareto optimal solutions with different trade-offs among multiple objectives. To this end, in this paper, we investigate the regret ratio minimization (RRM) problem in multi-objective submodular maximization, which aims to find at most k solutions to best approximate all Pareto optimal solutions w.r.t. any linear combination of objective functions. We propose a novel HS-RRM algorithm by transforming RRM into HittingSet problems based on the notions of ε-kernel and δ-net, where any α-approximation algorithm for single-objective submodular maximization is used as an oracle. We improve upon the previous best-known bound on the maximum regret ratio (MRR) of the output of HS-RRM and show that the new bound is nearly asymptotically optimal for any fixed number d of objective functions. Experiments on real-world and synthetic data confirm that HS-RRM achieves lower MRRs than existing algorithms.

Authors

Keywords

  • ML: Optimization
  • ML: Other Foundations of Machine Learning
  • SO: Other Foundations of Search & Optimization

Context

Venue
AAAI Conference on Artificial Intelligence
Archive span
1980-2026
Indexed papers
28718
Paper id
312282538924185814