A Unified Framework for Weighted Hypergraphic Networks and Fractional Matching
R\'emi Castera, Julien Fixary, Rida Laraki

TL;DR
This paper introduces a comprehensive framework for stability in hypergraphic networks with weighted relationships and budget constraints, extending existing theories to more complex multi-agent relationships and proposing new stability concepts.
Contribution
It generalizes pairwise stability to hypergraphs with budget constraints and introduces a stronger full stability concept, bridging weighted network formation and fractional matching theories.
Findings
Existence results for stability under various assumptions
Algorithms and explicit solutions for stable networks
Counter-examples illustrating the limits of assumptions
Abstract
Network formation theory studies how agents create and maintain relationships, and the stability of those relationships with respect to individual incentives. A central stability concept in this literature is pairwise stability, introduced by Jackson and Wolinsky (1996) for unweighted networks (agents are either connected or not) and later extended by Bich and Morhaim (2020) to weighted networks (connections can have different intensities). In this paper, we pursue two main objectives. First, we extend the notion of stability to networks defined on hypergraphs, where relationships may involve more than two agents simultaneously and where agents face budget constraints on the sum of the intensity of all their connections. We introduce a stability concept that preserves the core intuition of pairwise stability while generalizing it to relationships involving more than two agents, and that…
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Taxonomy
TopicsGame Theory and Applications · Game Theory and Voting Systems · Complex Network Analysis Techniques
