Sequential Mechanisms for Multi-type Resource Allocation
This work addresses resource allocation for agencies and planners in AI and economics, but it is incremental as it builds on existing models of preferences and mechanisms.
The paper tackles the problem of multi-type resource allocation by analyzing how properties of local mechanisms affect a sequential composition under lexicographic preferences, showing that strategyproofness and other desirable properties are preserved if and only if local mechanisms also satisfy these properties and are applied in a specific order.
Several resource allocation problems involve multiple types of resources, with a different agency being responsible for "locally" allocating the resources of each type, while a central planner wishes to provide a guarantee on the properties of the final allocation given agents' preferences. We study the relationship between properties of the local mechanisms, each responsible for assigning all of the resources of a designated type, and the properties of a sequential mechanism which is composed of these local mechanisms, one for each type, applied sequentially, under lexicographic preferences, a well studied model of preferences over multiple types of resources in artificial intelligence and economics. We show that when preferences are O-legal, meaning that agents share a common importance order on the types, sequential mechanisms satisfy the desirable properties of anonymity, neutrality, non-bossiness, or Pareto-optimality if and only if every local mechanism also satisfies the same property, and they are applied sequentially according to the order O. Our main results are that under O-legal lexicographic preferences, every mechanism satisfying strategyproofness and a combination of these properties must be a sequential composition of local mechanisms that are also strategyproof, and satisfy the same combinations of properties.