Incentive-Compatible Kidney Exchange in a Slightly Semi-Random Model
Avrim Blum, Paul G\"olz

TL;DR
This paper explores designing incentive-compatible mechanisms for kidney exchange modeled as a path selection problem in a semi-random graph, balancing truthful reporting and maximizing transplant opportunities.
Contribution
It introduces a truthful mechanism that competes with a weaker benchmark in a semi-random model, overcoming worst-case impossibility results.
Findings
Mechanism achieves matching-time incentive compatibility.
Mechanism competes with paths having minimum average subpath length.
Impossibility results in worst-case instances are addressed by semi-random model.
Abstract
Motivated by kidney exchange, we study the following mechanism-design problem: On a directed graph (of transplant compatibilities among patient-donor pairs), the mechanism must select a simple path (a chain of transplantations) starting at a distinguished vertex (an altruistic donor) such that the total length of this path is as large as possible (a maximum number of patients receive a kidney). However, the mechanism does not have direct access to the graph. Instead, the vertices are partitioned over multiple players (hospitals), and each player reports a subset of her vertices to the mechanism. In particular, a player may strategically omit vertices to increase how many of her vertices lie on the path returned by the mechanism. Our objective is to find mechanisms that limit incentives for such manipulation while producing long paths. Unfortunately, in worst-case instances, competing…
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