The Nile on eBay
  FREE SHIPPING UK WIDE
 

Causal Fairness Analysis

by Drago Plečko, Elias Bareinboim

The recent surge of interest in AI systems has raised concerns in moral quarters about their ethical use and whether they can demonstrate fair decision taking processes. In this monograph, the authors introduce a framework for causal fairness analysis to understand, model, and possibly solve issues of fairness in AI decision-making settings.

FORMAT
Paperback
CONDITION
Brand New


Publisher Description

The recent surge of interest in AI systems has raised concerns in moral quarters about their ethical use and whether they can demonstrate fair decision taking processes. Issues of unfairness and discrimination are pervasive when decisions are being made by humans, and are potentially amplified when decisions are made using machines with little transparency, accountability, and fairness. In this monograph, the authors introduce a framework for causal fairness analysis to understand, model, and possibly solve issues of fairness in AI decision-making settings.

The authors link the quantification of the disparities present in the observed data with the underlying, often unobserved, collection of causal mechanisms that generate the disparity in the first place, a challenge they call the Fundamental Problem of Causal Fairness Analysis (FPCFA). In order to solve the FPCFA, they study the mapping variations and empirical measures of fairness to structural mechanisms and different units of the population, culminating in the Fairness Map.

This monograph presents the first systematic attempt to organize and explain the relationship between various criteria in fairness and studies which causal assumptions are needed for performing causal fairness analysis. The resulting Fairness Cookbook allows anyone to assess the existence of disparate impact and disparate treatment. It is a timely and important introduction to developing future AI systems incorporating inherent fairness and as such will be of wide interest not only to AI system designers, but all who are interested in the wider impact AI will have on society.

Table of Contents

1. Introduction2. Foundations of Causal Inference3. Foundations of Causal Fairness Analysis4. Total Variation Family5. Fairness Tasks6. Disparate Impact and Business Necessity7. ConclusionsAcknowledgmentsAppendicesReferences

Details

ISBN1638283303
Author Elias Bareinboim
Pages 302
Publisher now publishers Inc
Series Foundations and Trends® in Machine Learning
Year 2024
ISBN-13 9781638283300
Format Paperback
Publication Date 2024-01-31
Imprint now publishers Inc
Subtitle A Causal Toolkit for Fair Machine Learning
Place of Publication Hanover
Country of Publication United States
Alternative 9781638283317
Audience Professional & Vocational
US Release Date 2024-01-31

TheNile_Item_ID:158341144;