Distributionally Robust Fair Principal Components via Geodesic Descents

02/07/2022
by   Hieu Vu, et al.
0

Principal component analysis is a simple yet useful dimensionality reduction technique in modern machine learning pipelines. In consequential domains such as college admission, healthcare and credit approval, it is imperative to take into account emerging criteria such as the fairness and the robustness of the learned projection. In this paper, we propose a distributionally robust optimization problem for principal component analysis which internalizes a fairness criterion in the objective function. The learned projection thus balances the trade-off between the total reconstruction error and the reconstruction error gap between subgroups, taken in the min-max sense over all distributions in a moment-based ambiguity set. The resulting optimization problem over the Stiefel manifold can be efficiently solved by a Riemannian subgradient descent algorithm with a sub-linear convergence rate. Our experimental results on real-world datasets show the merits of our proposed method over state-of-the-art baselines.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/11/2020

A multi-objective-based approach for Fair Principal Component Analysis

In dimension reduction problems, the adopted technique may produce dispa...
research
08/24/2022

A novel approach for Fair Principal Component Analysis based on eigendecomposition

Principal component analysis (PCA), a ubiquitous dimensionality reductio...
research
09/25/2018

Graph filtering for data reduction and reconstruction

A novel approach is put forth that utilizes data similarity, quantified ...
research
06/07/2023

Yet Another Algorithm for Supervised Principal Component Analysis: Supervised Linear Centroid-Encoder

We propose a new supervised dimensionality reduction technique called Su...
research
07/18/2020

Improved Convergence Speed of Fully Symmetric Learning Rules for Principal Component Analysis

Fully symmetric learning rules for principal component analysis can be d...
research
02/16/2020

Fair Principal Component Analysis and Filter Design

We consider Fair Principal Component Analysis (FPCA) and search for a lo...
research
09/23/2021

Fast and Efficient MMD-based Fair PCA via Optimization over Stiefel Manifold

This paper defines fair principal component analysis (PCA) as minimizing...

Please sign up or login with your details

Forgot password? Click here to reset