Maximizing monotone submodular functions under cardinality constraints is a classic optimization task with several applications in data mining and machine learning. In this paper we study this problem in a dynamic environment with consistency constraints: elements arrive in a streaming fashion and the goal is maintaining a constant approximation to the optimal solution while having a stable solution (i.e., the number of changes between two consecutive solutions is bounded). We provide algorithms in this setting with different trade-offs between consistency and approximation quality. We also complement our theoretical results with an experimental analysis showing the effectiveness of our algorithms in real-world instances.
Dettaglio pubblicazione
2024, Proceedings of Machine Learning Research, Pages 11979-11991 (volume: 235)
Consistent Submodular Maximization (04b Atto di convegno in volume)
Dutting P., Fusco F., Lattanzi S., Norouzi-Fard A., Zadimoghaddam M.
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