Almost Optimal Semi-streaming Maximization for k-Extendible Systems

11 Jun 2019  ·  Moran Feldman, Ran Haba ·

In this paper we consider the problem of finding a maximum weight set subject to a $k$-extendible constraint in the data stream model. The only non-trivial algorithm known for this problem to date---to the best of our knowledge---is a semi-streaming $k^2(1 + \varepsilon)$-approximation algorithm (Crouch and Stubbs, 2014), but semi-streaming $O(k)$-approximation algorithms are known for many restricted cases of this general problem. In this paper, we close most of this gap by presenting a semi-streaming $O(k \log k)$-approximation algorithm for the general problem, which is almost the best possible even in the offline setting (Feldman et al., 2017).

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Data Structures and Algorithms 68W40 (Primary) 68R05 (Secondary) F.2.2; G.1.6; G.2.1

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