English

Minimum Envy Graphical House Allocation Beyond Identical Valuations

Computer Science and Game Theory 2026-01-26 v2 Data Structures and Algorithms

Abstract

House allocation is an extremely well-studied problem in the field of fair allocation, where the goal is to assign nn houses to nn agents while satisfying certain fairness criterion, e.g., envy-freeness. To model social interactions, the Graphical House Allocation framework introduces a social graph GG, in which each vertex corresponds to an agent, and an edge (u,v)(u, v) corresponds to the potential of agent uu to envy the agent vv, based on their allocations and valuations. In undirected social graphs, the potential for envy is in both the directions. In the Minimum Envy Graphical House Allocation (ME-GHA) problem, given a set of nn agents, nn houses, a social graph, and agent's valuation functions, the goal is to find an allocation that minimizes the total envy summed up over all the edges of GG. Recent work, [Hosseini et al., AAMAS 2023, AAMAS 2024] studied ME-GHA in the regime of polynomial-time algorithms, and designed exact and approximation algorithms, for certain graph classes under identical agent valuations. We initiate the study of \gha with non-identical valuations, a setting that has so far remained unexplored. We investigate the multivariate (parameterized) complexity of \gha by identifying structural restrictions on the social graph and valuation functions that yield tractability. We also design moderately exponential-time algorithms for several graph classes, and a polynomial-time algorithm for {binary valuations that returns an allocation with envy at most one when the social graph has maximum degree at most one.

Keywords

Cite

@article{arxiv.2601.15864,
  title  = {Minimum Envy Graphical House Allocation Beyond Identical Valuations},
  author = {Tanmay Inamdar and Pallavi Jain and Pranjal Pandey},
  journal= {arXiv preprint arXiv:2601.15864},
  year   = {2026}
}

Comments

21 pages

R2 v1 2026-07-01T09:15:37.326Z