Continuous DR-submodular Maximization: Structure and Algorithms
November 04, 2017 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
An Bian, Kfir Y. Levy, Andreas Krause, Joachim M. Buhmann
arXiv ID
1711.02515
Category
cs.LG: Machine Learning
Cross-listed
cs.AI,
stat.ML
Citations
77
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
DR-submodular continuous functions are important objectives with wide real-world applications spanning MAP inference in determinantal point processes (DPPs), and mean-field inference for probabilistic submodular models, amongst others. DR-submodularity captures a subclass of non-convex functions that enables both exact minimization and approximate maximization in polynomial time. In this work we study the problem of maximizing non-monotone DR-submodular continuous functions under general down-closed convex constraints. We start by investigating geometric properties that underlie such objectives, e.g., a strong relation between (approximately) stationary points and global optimum is proved. These properties are then used to devise two optimization algorithms with provable guarantees. Concretely, we first devise a "two-phase" algorithm with $1/4$ approximation guarantee. This algorithm allows the use of existing methods for finding (approximately) stationary points as a subroutine, thus, harnessing recent progress in non-convex optimization. Then we present a non-monotone Frank-Wolfe variant with $1/e$ approximation guarantee and sublinear convergence rate. Finally, we extend our approach to a broader class of generalized DR-submodular continuous functions, which captures a wider spectrum of applications. Our theoretical findings are validated on synthetic and real-world problem instances.
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