Maximizing Social Welfare in Score-Based Social Distance Games

Robert Ganian
Thekla Hamm
Dušan Knop
Sanjukta Roy
Šimon Schierreich
Ondřej Suchý

Social distance games have been extensively studied as a coalition formation model where the utilities of agents in each coalition were captured using a utility function u that took into account distances in a given social network. In this paper, we consider a non-normalized score-based definition of social distance games where the utility function u_v depends on a generic scoring vector v, which may be customized to match the specifics of each individual application scenario.

As our main technical contribution, we establish the tractability of computing a welfare-maximizing partitioning of the agents into coalitions on tree-like networks, for every score-based function u_v. We provide more efficient algorithms when dealing with specific choices of u_v or simpler networks, and also extend all of these results to computing coalitions that are Nash stable or individually rational. We view these results as a further strong indication of the usefulness of the proposed score-based utility function: even on very simple networks, the problem of computing a welfare-maximizing partitioning into coalitions remains open for the originally considered canonical function u.

In Rineke Verbrugge: Proceedings Nineteenth conference on Theoretical Aspects of Rationality and Knowledge (TARK 2023), Oxford, United Kingdom, 28-30th June 2023, Electronic Proceedings in Theoretical Computer Science 379, pp. 272–286.
Published: 11th July 2023.

ArXived at: https://dx.doi.org/10.4204/EPTCS.379.22 bibtex PDF
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