Graph explorer

Fair Policy Targeting

One of the major concerns of targeting interventions on individuals in social welfare programs is discrimination: individualized treatments may induce disparities across sensitive attributes such as age, gender, or race. This paper addresses the question of the design of fair and efficient treatment allocation rules. We adopt the non-maleficence perspective of first do no harm: we select the fairest allocation within the Pareto frontier. We cast the optimization into a mixed-integer linear program formulation, which can be solved using off-the-shelf algorithms. We derive regret bounds on the unfairness of the estimated policy function and small sample guarantees on the Pareto frontier under general notions of fairness. Finally, we illustrate our method using an application from education economics.

8 nodes14 linksoverview previewFair Policy Targeting
8 nodes14 links
Fair Policy Targeting8 visible / 8 total nodes / 15 links
Related contextRelated contextRelated contextRelated contextCo-authorshipRelated contextRelated contextAuthorshipWorks onAuthorshipTopic signalTopic signalTopic signalTopic signalTopic signalWFair Policy Targetingpreprint / 2022ADavide VivianoResearcherAJelena BradicResearcherTMachine Learning49008 worksTMethodology5119 worksTmath.ST3384 worksTStatistics Theory3281 worksTecon.EM938 works
PaperSignal 107 links

Fair Policy Targeting

preprint / 2022

Open