Fast First-Order Methods for Monotone Strongly DR-Submodular Maximization
Omid Sadeghi, Maryam Fazel

TL;DR
This paper introduces and analyzes fast first-order algorithms for maximizing strongly DR-submodular functions, achieving improved approximation ratios and convergence rates by exploiting strong concavity and smoothness properties.
Contribution
The paper characterizes strongly DR-submodular functions and develops algorithms with optimal approximation guarantees and faster convergence for their maximization.
Findings
SDRFW algorithm achieves optimal approximation after few iterations.
Projected Gradient Ascent has a linear convergence rate with refined analysis.
L-smoothness parameter can be efficiently computed via convex optimization.
Abstract
Continuous DR-submodular functions are a class of functions that satisfy the Diminishing Returns (DR) property, which implies that they are concave along non-negative directions. Existing works have studied monotone continuous DR-submodular maximization subject to a convex constraint and have proposed efficient algorithms with approximation guarantees. However, in many applications, e.g., computing the stability number of a graph and mean-field inference for probabilistic log-submodular models, the DR-submodular function has the additional property of being \emph{strongly} concave along non-negative directions that could be utilized for obtaining faster convergence rates. In this paper, we first introduce and characterize the class of \emph{strongly DR-submodular} functions and show how such a property implies strong concavity along non-negative directions. Then, we study -smooth…
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Taxonomy
TopicsComplexity and Algorithms in Graphs · Stochastic Gradient Optimization Techniques · Computational Geometry and Mesh Generation
