Non-Monotone Submodular Maximization with Multiple Knapsacks in Static and Dynamic Settings
November 15, 2019 Β· Declared Dead Β· π European Conference on Artificial Intelligence
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Authors
Vanja DoskoΔ, Tobias Friedrich, Andreas GΓΆbel, Frank Neumann, Aneta Neumann, Francesco Quinzan
arXiv ID
1911.06791
Category
cs.LG: Machine Learning
Cross-listed
cs.DS
Citations
3
Venue
European Conference on Artificial Intelligence
Last Checked
3 months ago
Abstract
We study the problem of maximizing a non-monotone submodular function under multiple knapsack constraints. We propose a simple discrete greedy algorithm to approach this problem, and prove that it yields strong approximation guarantees for functions with bounded curvature. In contrast to other heuristics, this requires no problem relaxation to continuous domains and it maintains a constant-factor approximation guarantee in the problem size. In the case of a single knapsack, our analysis suggests that the standard greedy can be used in non-monotone settings. Additionally, we study this problem in a dynamic setting, by which knapsacks change during the optimization process. We modify our greedy algorithm to avoid a complete restart at each constraint update. This modification retains the approximation guarantees of the static case. We evaluate our results experimentally on a video summarization and sensor placement task. We show that our proposed algorithm competes with the state-of-the-art in static settings. Furthermore, we show that in dynamic settings with tight computational time budget, our modified greedy yields significant improvements over starting the greedy from scratch, in terms of the solution quality achieved.
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