Ignorance is Almost Bliss: Near-Optimal Stochastic Matching With Few Queries
Avrim Blum, John P. Dickerson, Nika Haghtalab, Ariel D. Procaccia,, Tuomas Sandholm, Ankit Sharma

TL;DR
This paper introduces near-optimal adaptive and non-adaptive algorithms for stochastic matching and set packing problems, achieving high approximation ratios with few queries, and demonstrates their effectiveness in kidney exchange applications.
Contribution
It develops the first adaptive algorithms with constant queries per vertex for stochastic matching and set packing, achieving near-omniscient optimal solutions, and extends these results to practical kidney exchange scenarios.
Findings
Adaptive algorithms achieve (1-ε) approximation with constant queries.
Non-adaptive algorithms achieve approximately 0.5-ε approximation.
Algorithms significantly improve match success in kidney exchange data.
Abstract
The stochastic matching problem deals with finding a maximum matching in a graph whose edges are unknown but can be accessed via queries. This is a special case of stochastic -set packing, where the problem is to find a maximum packing of sets, each of which exists with some probability. In this paper, we provide edge and set query algorithms for these two problems, respectively, that provably achieve some fraction of the omniscient optimal solution. Our main theoretical result for the stochastic matching (i.e., -set packing) problem is the design of an \emph{adaptive} algorithm that queries only a constant number of edges per vertex and achieves a fraction of the omniscient optimal solution, for an arbitrarily small . Moreover, this adaptive algorithm performs the queries in only a constant number of rounds. We complement this result with a…
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