Demographic Parity Constrained Minimax Optimal Regression under Linear Model
Statistics Theory
2023-08-25 v3 Machine Learning
Statistics Theory
Abstract
We explore the minimax optimal error associated with a demographic parity-constrained regression problem within the context of a linear model. Our proposed model encompasses a broader range of discriminatory bias sources compared to the model presented by Chzhen and Schreuder (2022). Our analysis reveals that the minimax optimal error for the demographic parity-constrained regression problem under our model is characterized by , where denotes the sample size, represents the dimensionality, and signifies the number of demographic groups arising from sensitive attributes. Moreover, we demonstrate that the minimax error increases in conjunction with a larger bias present in the model.
Keywords
Cite
@article{arxiv.2206.11546,
title = {Demographic Parity Constrained Minimax Optimal Regression under Linear Model},
author = {Kazuto Fukuchi and Jun Sakuma},
journal= {arXiv preprint arXiv:2206.11546},
year = {2023}
}
Comments
44 pages, 1figure