A Causal Approach for Unfair Edge Prioritization and Discrimination Removal
Pavan Ravishankar, Pranshu Malviya, and Balaraman Ravindran

TL;DR
This paper introduces a causal framework to identify and mitigate sources of unfairness in data generation, providing algorithms for prioritizing unfair edges and removing discrimination, validated through extensive experiments.
Contribution
It presents a novel causal approach with algorithms for unfair edge prioritization and discrimination removal during data generation, unlike previous post-hoc de-biasing methods.
Findings
Edge unfairness quantification correlates with cumulative unfairness.
Removing edge unfairness reduces group-based discrimination.
Algorithms effectively mitigate unfairness in causal models.
Abstract
In budget-constrained settings aimed at mitigating unfairness, like law enforcement, it is essential to prioritize the sources of unfairness before taking measures to mitigate them in the real world. Unlike previous works, which only serve as a caution against possible discrimination and de-bias data after data generation, this work provides a toolkit to mitigate unfairness during data generation, given by the Unfair Edge Prioritization algorithm, in addition to de-biasing data after generation, given by the Discrimination Removal algorithm. We assume that a non-parametric Markovian causal model representative of the data generation procedure is given. The edges emanating from the sensitive nodes in the causal graph, such as race, are assumed to be the sources of unfairness. We first quantify Edge Flow in any edge X -> Y, which is the belief of observing a specific value of Y due to the…
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Taxonomy
TopicsGame Theory and Voting Systems · Electoral Systems and Political Participation · Legal and Constitutional Studies
