Fair Algorithms for Learning in Allocation Problems
Hadi Elzayn, Shahin Jabbari, Christopher Jung, Michael Kearns, Seth, Neel, Aaron Roth, Zachary Schutzman

TL;DR
This paper introduces a fair allocation framework for resource distribution problems like lending and policing, proposing an efficient learning algorithm that ensures fairness even with limited feedback and unknown candidate distributions.
Contribution
It formalizes a fairness notion based on equality of opportunity and develops an algorithm that learns to allocate resources fairly under censored feedback conditions.
Findings
Algorithm converges to an optimal fair allocation.
Effective in unknown candidate frequency scenarios.
Proven to overcome feedback loop issues in predictive policing.
Abstract
Settings such as lending and policing can be modeled by a centralized agent allocating a resource (loans or police officers) amongst several groups, in order to maximize some objective (loans given that are repaid or criminals that are apprehended). Often in such problems fairness is also a concern. A natural notion of fairness, based on general principles of equality of opportunity, asks that conditional on an individual being a candidate for the resource, the probability of actually receiving it is approximately independent of the individual's group. In lending this means that equally creditworthy individuals in different racial groups have roughly equal chances of receiving a loan. In policing it means that two individuals committing the same crime in different districts would have roughly equal chances of being arrested. We formalize this fairness notion for allocation problems…
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Taxonomy
TopicsAuction Theory and Applications · Privacy-Preserving Technologies in Data · Machine Learning and Algorithms
