Submodular + Concave
Siddharth Mitra, Moran Feldman, Amin Karbasi

TL;DR
This paper introduces algorithms for maximizing functions that combine smooth DR-submodular and concave components over convex sets, providing approximation guarantees and demonstrating superior performance in diverse applications.
Contribution
It develops Frank-Wolfe style algorithms with theoretical guarantees for a new class of functions combining DR-submodular and concave parts, extending prior work.
Findings
Algorithms achieve 1-1/e, 1/e, or 1/2 approximation guarantees.
Framework interpolates between diverse and clustered element selection.
Algorithms outperform natural baselines in various experiments.
Abstract
It has been well established that first order optimization methods can converge to the maximal objective value of concave functions and provide constant factor approximation guarantees for (non-convex/non-concave) continuous submodular functions. In this work, we initiate the study of the maximization of functions of the form over a solvable convex body , where is a smooth DR-submodular function and is a smooth concave function. This class of functions is a strict extension of both concave and continuous DR-submodular functions for which no theoretical guarantee is known. We provide a suite of Frank-Wolfe style algorithms, which, depending on the nature of the objective function (i.e., if and are monotone or not, and non-negative or not) and on the nature of the set (i.e., whether it is downward closed or not), provide , , or …
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Taxonomy
TopicsComplexity and Algorithms in Graphs · Sparse and Compressive Sensing Techniques · Stochastic Gradient Optimization Techniques
