Unintended Selection: Persistent Qualification Rate Disparities and Interventions
Reilly Raab, Yang Liu

TL;DR
This paper models how disparities in qualification rates between groups can persist over time due to the dynamics of imitation and classification, and proposes interventions to eliminate these disparities.
Contribution
It introduces a dynamical model of qualification disparities using the replicator equation and demonstrates how interventions can effectively reduce persistent inequalities.
Findings
Qualification disparities can persist indefinitely under uniformed classifiers.
Simulations show effectiveness of proposed fairness interventions.
A feedback control mechanism can permanently eliminate qualification rate disparities.
Abstract
Realistically -- and equitably -- modeling the dynamics of group-level disparities in machine learning remains an open problem. In particular, we desire models that do not suppose inherent differences between artificial groups of people -- but rather endogenize disparities by appeal to unequal initial conditions of insular subpopulations. In this paper, agents each have a real-valued feature (e.g., credit score) informed by a "true" binary label representing qualification (e.g., for a loan). Each agent alternately (1) receives a binary classification label (e.g., loan approval) from a Bayes-optimal machine learning classifier observing and (2) may update their qualification by imitating successful strategies (e.g., seek a raise) within an isolated group of agents to which they belong. We consider the disparity of qualification rates between…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Experimental Behavioral Economics Studies · COVID-19 epidemiological studies
