Guaranteed Non-convex Optimization: Submodular Maximization over Continuous Domains

June 17, 2016 ยท Declared Dead ยท ๐Ÿ› International Conference on Artificial Intelligence and Statistics

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Authors Andrew An Bian, Baharan Mirzasoleiman, Joachim M. Buhmann, Andreas Krause arXiv ID 1606.05615 Category cs.LG: Machine Learning Cross-listed cs.DS Citations 159 Venue International Conference on Artificial Intelligence and Statistics Last Checked 1 month ago
Abstract
Submodular continuous functions are a category of (generally) non-convex/non-concave functions with a wide spectrum of applications. We characterize these functions and demonstrate that they can be maximized efficiently with approximation guarantees. Specifically, i) We introduce the weak DR property that gives a unified characterization of submodularity for all set, integer-lattice and continuous functions; ii) for maximizing monotone DR-submodular continuous functions under general down-closed convex constraints, we propose a Frank-Wolfe variant with $(1-1/e)$ approximation guarantee, and sub-linear convergence rate; iii) for maximizing general non-monotone submodular continuous functions subject to box constraints, we propose a DoubleGreedy algorithm with $1/3$ approximation guarantee. Submodular continuous functions naturally find applications in various real-world settings, including influence and revenue maximization with continuous assignments, sensor energy management, multi-resolution data summarization, facility location, etc. Experimental results show that the proposed algorithms efficiently generate superior solutions compared to baseline algorithms.
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