Impact Remediation: Optimal Interventions to Reduce Inequality
- URL: http://arxiv.org/abs/2107.00593v1
- Date: Thu, 1 Jul 2021 16:35:12 GMT
- Title: Impact Remediation: Optimal Interventions to Reduce Inequality
- Authors: Lucius E.J. Bynum, Joshua R. Loftus, Julia Stoyanovich
- Abstract summary: We develop a novel algorithmic framework for tackling pre-existing real-world disparities.
The purpose of our framework is to measure real-world disparities and discover optimal intervention policies.
In contrast to most work on optimal policy learning, we explore disparity reduction itself as an objective.
- Score: 10.806517393212491
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: A significant body of research in the data sciences considers unfair
discrimination against social categories such as race or gender that could
occur or be amplified as a result of algorithmic decisions. Simultaneously,
real-world disparities continue to exist, even before algorithmic decisions are
made. In this work, we draw on insights from the social sciences and humanistic
studies brought into the realm of causal modeling and constrained optimization,
and develop a novel algorithmic framework for tackling pre-existing real-world
disparities. The purpose of our framework, which we call the "impact
remediation framework," is to measure real-world disparities and discover the
optimal intervention policies that could help improve equity or access to
opportunity for those who are underserved with respect to an outcome of
interest. We develop a disaggregated approach to tackling pre-existing
disparities that relaxes the typical set of assumptions required for the use of
social categories in structural causal models. Our approach flexibly
incorporates counterfactuals and is compatible with various ontological
assumptions about the nature of social categories. We demonstrate impact
remediation with a real-world case study and compare our disaggregated approach
to an existing state-of-the-art approach, comparing its structure and resulting
policy recommendations. In contrast to most work on optimal policy learning, we
explore disparity reduction itself as an objective, explicitly focusing the
power of algorithms on reducing inequality.
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