Minimum Envy Graphical House Allocation Beyond Identical Valuations
Tanmay Inamdar, Pallavi Jain, Pranjal Pandey

TL;DR
This paper explores the complexity of the Minimum Envy Graphical House Allocation problem with non-identical valuations, proposing algorithms for specific graph classes and valuation types to minimize envy.
Contribution
It introduces the study of ME-GHA with non-identical valuations, analyzing its parameterized complexity and providing algorithms for certain graph structures and valuation scenarios.
Findings
Polynomial-time algorithm for binary valuations with max degree one social graph.
Moderately exponential algorithms for specific graph classes.
Structural restrictions lead to tractability in the non-identical valuations setting.
Abstract
House allocation is an extremely well-studied problem in the field of fair allocation, where the goal is to assign houses to agents while satisfying certain fairness criterion, e.g., envy-freeness. To model social interactions, the Graphical House Allocation framework introduces a social graph , in which each vertex corresponds to an agent, and an edge corresponds to the potential of agent to envy the agent , 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 agents, 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 . Recent work, [Hosseini et al., AAMAS 2023, AAMAS 2024] studied ME-GHA in the regime…
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Taxonomy
TopicsGame Theory and Voting Systems · Complexity and Algorithms in Graphs · Auction Theory and Applications
