On the Optimality of Greedy Policies in Dynamic Matching

成果类型:
Article
署名作者:
Kerimov, Suleyman; Ashlagi, Itai; Gurvich, Itai
署名单位:
Rice University; Stanford University; Northwestern University
刊物名称:
OPERATIONS RESEARCH
ISSN/ISSBN:
0030-364X
DOI:
10.1287/opre.2021.0596
发表日期:
2025
关键词:
stability
摘要:
We study centralized dynamic matching markets with finitely many agent types and heterogeneous match values. A network topology describes the pairs of agent types that can form a match and the value generated from each match. A matching policy is hindsight optimal if the policy can (nearly) maximize the total value simultaneously at all times. We find that suitably designed greedy policies are hindsight optimal in two-way matching networks. This implies that there is essentially no positive externality from having agents waiting to form future matches. We first show that the greedy longest-queue policy with a minor variation is hindsight optimal. Importantly, the policy is greedy relative to a residual network, which includes only nonredundant matches with respect to the static optimal matching rates. Moreover, when the residual network is acyclic (e.g., as in two-sided networks), we prescribe a greedy static priority policy that is also hindsight optimal. The priority order of this policy is robust to arrival rate perturbations that do not alter the residual network. Hindsight optimality is closely related to the lengths of type-specific queues. Queue lengths cannot be smaller (in expectation) than of the order of e �1, where e is the general position gap that quantifies the stability in the network. The greedy longest queue policy achieves this lower bound.