pith. sign in

Equal Opportunity and Affirmative Action via Counterfactual Predictions

1 Pith paper cite this work. Polarity classification is still indexing.

1 Pith paper citing it
abstract

Machine learning (ML) can automate decision-making by learning to predict decisions from historical data. However, these predictors may inherit discriminatory policies from past decisions and reproduce unfair decisions. In this paper, we propose two algorithms that adjust fitted ML predictors to make them fair. We focus on two legal notions of fairness: (a) providing equal opportunity (EO) to individuals regardless of sensitive attributes and (b) repairing historical disadvantages through affirmative action (AA). More technically, we produce fair EO and AA predictors by positing a causal model and considering counterfactual decisions. We prove that the resulting predictors are theoretically optimal in predictive performance while satisfying fairness. We evaluate the algorithms, and the trade-offs between accuracy and fairness, on datasets about admissions, income, credit and recidivism.

fields

cs.LG 1

years

2026 1

verdicts

UNVERDICTED 1

representative citing papers

Mitigating Label Bias with Interpretable Rubric Embeddings

cs.LG · 2026-05-20 · unverdicted · novelty 6.0

Rubric embeddings from expert criteria mitigate label bias in models trained on historical evaluations, reducing group disparities while improving cohort quality on a master's program dataset.

citing papers explorer

Showing 1 of 1 citing paper.

  • Mitigating Label Bias with Interpretable Rubric Embeddings cs.LG · 2026-05-20 · unverdicted · none · ref 46 · internal anchor

    Rubric embeddings from expert criteria mitigate label bias in models trained on historical evaluations, reducing group disparities while improving cohort quality on a master's program dataset.