Approximation Algorithms for Online Weighted Rank Function Maximization under Matroid Constraints
Niv Buchbinder, Joseph (Seffi) Naor, R. Ravi, Mohit Singh

TL;DR
This paper introduces the first randomized online algorithms with poly-logarithmic competitive ratios for maximizing weighted rank functions under matroid constraints, extending submodular maximization and online set cover work.
Contribution
It develops novel randomized algorithms using LP relaxation and online rounding for online weighted rank maximization under matroids, achieving poly-logarithmic competitive ratios.
Findings
First randomized algorithms with poly-logarithmic competitive ratio
Novel LP-based fractional solution and rounding technique
New covering properties for fractional solutions in matroid polytopes
Abstract
Consider the following online version of the submodular maximization problem under a matroid constraint: We are given a set of elements over which a matroid is defined. The goal is to incrementally choose a subset that remains independent in the matroid over time. At each time, a new weighted rank function of a different matroid (one per time) over the same elements is presented; the algorithm can add a few elements to the incrementally constructed set, and reaps a reward equal to the value of the new weighted rank function on the current set. The goal of the algorithm as it builds this independent set online is to maximize the sum of these (weighted rank) rewards. As in regular online analysis, we compare the rewards of our online algorithm to that of an offline optimum, namely a single independent set of the matroid that maximizes the sum of the weighted rank rewards that arrive over…
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