Legally grounded fairness objectives

09/24/2020
by   Dylan Holden-Sim, et al.
0

Recent work has identified a number of formally incompatible operational measures for the unfairness of a machine learning (ML) system. As these measures all capture intuitively desirable aspects of a fair system, choosing "the one true" measure is not possible, and instead a reasonable approach is to minimize a weighted combination of measures. However, this simply raises the question of how to choose the weights. Here, we formulate Legally Grounded Fairness Objectives (LGFO), which uses signals from the legal system to non-arbitrarily measure the social cost of a specific degree of unfairness. The LGFO is the expected damages under a putative lawsuit that might be awarded to those who were wrongly classified, in the sense that the ML system made a decision different to that which would have be made under the court's preferred measure. Notably, the two quantities necessary to compute the LGFO, the court's preferences about fairness measures, and the expected damages, are unknown but well-defined, and can be estimated by legal advice. Further, as the damages awarded by the legal system are designed to measure and compensate for the harm caused to an individual by an unfair classification, the LGFO aligns closely with society's estimate of the social cost.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/25/2019

On the Legal Compatibility of Fairness Definitions

Past literature has been effective in demonstrating ideological gaps in ...
research
12/14/2019

On the Apparent Conflict Between Individual and Group Fairness

A distinction has been drawn in fair machine learning research between `...
research
08/16/2021

Legal perspective on possible fairness measures - A legal discussion using the example of hiring decisions (preprint)

With the increasing use of AI in algorithmic decision making (e.g. based...
research
09/14/2020

Justicia: A Stochastic SAT Approach to Formally Verify Fairness

As a technology ML is oblivious to societal good or bad, and thus, the f...
research
10/25/2018

Law and Adversarial Machine Learning

When machine learning systems fail because of adversarial manipulation, ...
research
12/01/2022

Beyond Incompatibility: Trade-offs between Mutually Exclusive Fairness Criteria in Machine Learning and Law

Trustworthy AI is becoming ever more important in both machine learning ...
research
06/13/2021

FairCanary: Rapid Continuous Explainable Fairness

Machine Learning (ML) models are being used in all facets of today's soc...

Please sign up or login with your details

Forgot password? Click here to reset