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Randomized Greedy Methods for Weak Submodular Sensor Selection with Robustness Considerations

Authors :
Kaya, Ege C.
Hibbard, Michael
Tanaka, Takashi
Topcu, Ufuk
Hashemi, Abolfazl
Publication Year :
2024

Abstract

We study a pair of budget- and performance-constrained weak submodular maximization problems. For computational efficiency, we explore the use of stochastic greedy algorithms which limit the search space via random sampling instead of the standard greedy procedure which explores the entire feasible search space. We propose a pair of stochastic greedy algorithms, namely, Modified Randomized Greedy (MRG) and Dual Randomized Greedy (DRG) to approximately solve the budget- and performance-constrained problems, respectively. For both algorithms, we derive approximation guarantees that hold with high probability. We then examine the use of DRG in robust optimization problems wherein the objective is to maximize the worst-case of a number of weak submodular objectives and propose the Randomized Weak Submodular Saturation Algorithm (Random-WSSA). We further derive a high-probability guarantee for when Random-WSSA successfully constructs a robust solution. Finally, we showcase the effectiveness of these algorithms in a variety of relevant uses within the context of Earth-observing LEO constellations which estimate atmospheric weather conditions and provide Earth coverage.<br />Comment: 36 pages, 5 figures. A preliminary version of this article was presented at the 2023 American Control Conference (ACC). This version was submitted to Automatica

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2404.03740
Document Type :
Working Paper