Fairness Measures for Regression via Probabilistic Classification

01/16/2020
by   Daniel Steinberg, et al.
8

Algorithmic fairness involves expressing notions such as equity, or reasonable treatment, as quantifiable measures that a machine learning algorithm can optimise. Most work in the literature to date has focused on classification problems where the prediction is categorical, such as accepting or rejecting a loan application. This is in part because classification fairness measures are easily computed by comparing the rates of outcomes, leading to behaviours such as ensuring that the same fraction of eligible men are selected as eligible women. But such measures are computationally difficult to generalise to the continuous regression setting for problems such as pricing, or allocating payments. The difficulty arises from estimating conditional densities (such as the probability density that a system will over-charge by a certain amount). For the regression setting we introduce tractable approximations of the independence, separation and sufficiency criteria by observing that they factorise as ratios of different conditional probabilities of the protected attributes. We introduce and train machine learning classifiers, distinct from the predictor, as a mechanism to estimate these probabilities from the data. This naturally leads to model agnostic, tractable approximations of the criteria, which we explore experimentally.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/14/2020

Fast Fair Regression via Efficient Approximations of Mutual Information

Most work in algorithmic fairness to date has focused on discrete outcom...
research
05/16/2019

Fairness in Machine Learning with Tractable Models

Machine Learning techniques have become pervasive across a range of diff...
research
10/09/2017

On formalizing fairness in prediction with machine learning

Machine learning algorithms for prediction are increasingly being used i...
research
10/02/2020

Explainable Online Validation of Machine Learning Models for Practical Applications

We present a reformulation of the regression and classification, which a...
research
09/09/2021

Gradual (In)Compatibility of Fairness Criteria

Impossibility results show that important fairness measures (independenc...
research
06/12/2022

Bounding and Approximating Intersectional Fairness through Marginal Fairness

Discrimination in machine learning often arises along multiple dimension...
research
02/23/2023

Auditing for Spatial Fairness

This paper studies algorithmic fairness when the protected attribute is ...

Please sign up or login with your details

Forgot password? Click here to reset