Fast Adaptive Non-Monotone Submodular Maximization Subject to a Knapsack Constraint

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Authors Georgios Amanatidis, Federico Fusco, Philip Lazos, Stefano Leonardi, Rebecca ReiffenhΓ€user arXiv ID 2007.05014 Category cs.DS: Data Structures & Algorithms Cross-listed cs.LG Citations 49 Venue Neural Information Processing Systems Last Checked 3 months ago
Abstract
Constrained submodular maximization problems encompass a wide variety of applications, including personalized recommendation, team formation, and revenue maximization via viral marketing. The massive instances occurring in modern day applications can render existing algorithms prohibitively slow, while frequently, those instances are also inherently stochastic. Focusing on these challenges, we revisit the classic problem of maximizing a (possibly non-monotone) submodular function subject to a knapsack constraint. We present a simple randomized greedy algorithm that achieves a $5.83$ approximation and runs in $O(n \log n)$ time, i.e., at least a factor $n$ faster than other state-of-the-art algorithms. The robustness of our approach allows us to further transfer it to a stochastic version of the problem. There, we obtain a 9-approximation to the best adaptive policy, which is the first constant approximation for non-monotone objectives. Experimental evaluation of our algorithms showcases their improved performance on real and synthetic data.
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