Approaches to the Algorithmic Allocation of Public Resources: A Cross-disciplinary Review
Saba Esnaashari, Jonathan Bright, John Francis, Youmna Hashem, Vincent, Straub, Deborah Morgan

TL;DR
This paper reviews cross-disciplinary approaches to algorithmic resource allocation in public sectors, highlighting common techniques, ethical considerations, and potential for performance improvements.
Contribution
It provides a comprehensive literature review categorizing existing methods and identifies gaps in ethical and bias considerations in algorithmic resource allocation.
Findings
Majority of studies use human-centered approaches
Optimization techniques can reduce waiting times by up to 50%
Limited focus on ethics and bias in existing research
Abstract
Allocation of scarce resources is a recurring challenge for the public sector: something that emerges in areas as diverse as healthcare, disaster recovery, and social welfare. The complexity of these policy domains and the need for meeting multiple and sometimes conflicting criteria has led to increased focus on the use of algorithms in this type of decision. However, little engagement between researchers across these domains has happened, meaning a lack of understanding of common problems and techniques for approaching them. Here, we performed a cross disciplinary literature review to understand approaches taken for different areas of algorithmic allocation including healthcare, organ transplantation, homelessness, disaster relief, and welfare. We initially identified 1070 papers by searching the literature, then six researchers went through them in two phases of screening resulting in…
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Taxonomy
TopicsOrgan Donation and Transplantation · Global Maternal and Child Health
