Online Weighted Matching with a Sample
Haim Kaplan, David Naori, Danny Raz

TL;DR
This paper thoroughly analyzes a simple greedy algorithm for online weighted matching across various models, providing exact competitive ratios, extending to general graphs, and improving prophet inequalities.
Contribution
It offers the first complete characterization of the greedy algorithm's performance in multiple online models, including adversarial and random orders, and advances prophet inequality bounds.
Findings
Exact competitive ratio in the random-order model for bipartite graphs.
First analysis of greedy algorithm in adversarial-order model with a sample.
Improved single-sample prophet inequality bounds.
Abstract
We study the greedy-based online algorithm for edge-weighted matching with (one-sided) vertex arrivals in bipartite graphs, and edge arrivals in general graphs. This algorithm was first studied more than a decade ago by Korula and P\'al for the bipartite case in the random-order model. While the weighted bipartite matching problem is solved in the random-order model, this is not the case in recent and exciting online models in which the online player is provided with a sample, and the arrival order is adversarial. The greedy-based algorithm is arguably the most natural and practical algorithm to be applied in these models. Despite its simplicity and appeal, and despite being studied in multiple works, the greedy-based algorithm was not fully understood in any of the studied online models, and its actual performance remained an open question for more than a decade. We provide a…
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