Détail du document
Identifiant

oai:arXiv.org:2402.18129

Sujet
Computer Science - Machine Learnin... Computer Science - Artificial Inte... Computer Science - Information The...
Auteur
Lei, Haoyu Gohari, Amin Farnia, Farzan
Catégorie

Computer Science

Année

2024

Date de référencement

26/06/2024

Mots clés
training distribution inductive biases algorithms dp-based sensitive learning attribute
Métrique

Résumé

Fair supervised learning algorithms assigning labels with little dependence on a sensitive attribute have attracted great attention in the machine learning community.

While the demographic parity (DP) notion has been frequently used to measure a model's fairness in training fair classifiers, several studies in the literature suggest potential impacts of enforcing DP in fair learning algorithms.

In this work, we analytically study the effect of standard DP-based regularization methods on the conditional distribution of the predicted label given the sensitive attribute.

Our analysis shows that an imbalanced training dataset with a non-uniform distribution of the sensitive attribute could lead to a classification rule biased toward the sensitive attribute outcome holding the majority of training data.

To control such inductive biases in DP-based fair learning, we propose a sensitive attribute-based distributionally robust optimization (SA-DRO) method improving robustness against the marginal distribution of the sensitive attribute.

Finally, we present several numerical results on the application of DP-based learning methods to standard centralized and distributed learning problems.

The empirical findings support our theoretical results on the inductive biases in DP-based fair learning algorithms and the debiasing effects of the proposed SA-DRO method.

Lei, Haoyu,Gohari, Amin,Farnia, Farzan, 2024, On the Inductive Biases of Demographic Parity-based Fair Learning Algorithms

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