English

On the Meta-Design of Allocation Problems

Computers and Society 2026-05-11 v4 Machine Learning

Abstract

There is an extensive literature that studies how to find optimal policies in resource allocation problems, taking the underlying design parameters that define the allocation, such as what data is collected, how many people can be served, and quality of service as fixed constraints. Yet, from a planner's perspective, these design parameters are themselves optimization variables that are just as important in determining overall welfare as selecting the optimal targeting rule for a given set of constraints. This realization motivates a rich set of meta-design questions exploring how planners should make principled decisions about investments in prediction, capacity constraints, and treatment quality, all of which lie upstream of classical policy optimization. Building on initial theoretical work in this space, our paper has three main contributions. First, we formally define the broad meta-design space of resource allocation problems. Second, we develop empirical tools that enable practitioners to reliably navigate it. Third, we demonstrate the framework in two real-world case studies on German employment services and targeted cash transfer programs in Ethiopia.

Keywords

Cite

@article{arxiv.2602.08786,
  title  = {On the Meta-Design of Allocation Problems},
  author = {Unai Fischer-Abaigar and Emily Aiken and Christoph Kern and Juan Carlos Perdomo},
  journal= {arXiv preprint arXiv:2602.08786},
  year   = {2026}
}
R2 v1 2026-07-01T10:28:07.218Z