Stationary Online Contention Resolution Schemes
Mohammad Reza Aminian, Rad Niazadeh, Pranav Nuti

TL;DR
This paper introduces stationary online contention resolution schemes (S-OCRSs), a permutation-invariant class that simplifies the design of online policies and improves approximation guarantees in resource allocation problems.
Contribution
The paper develops a new framework for designing OCRSs using maximum-entropy distributions, leading to improved and more transparent algorithms for various combinatorial settings.
Findings
Achieved an improved OCRS for bipartite matchings with optimal conjectured selectability.
Derived a new OCRS for k-uniform matroids with near-optimal guarantees.
Provided explicit, systematic constructions for OCRSs in multiple environments.
Abstract
Online contention resolution schemes (OCRSs) are a central tool in Bayesian online selection and resource allocation: they convert fractional ex-ante relaxations into feasible online policies while preserving each marginal probability up to a constant factor. Despite their importance, designing (near) optimal OCRSs is often technically challenging, and many existing constructions rely on indirect reductions to prophet inequalities and LP duality, resulting in algorithms that are difficult to interpret or implement. In this paper, we introduce "stationary online contention resolution schemes (S-OCRSs)," a permutation-invariant class of OCRSs in which the distribution of the selected feasible set is independent of arrival order. We show that S-OCRSs admit an exact distributional characterization together with a universal online implementation. We then develop a general `maximum-entropy'…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Age of Information Optimization · Optimization and Search Problems
