AICYLGMLJan 2, 2020

On Consequentialism and Fairness

arXiv:2001.00329v217 citations
AI Analysis

This work addresses foundational ethical issues in fairness for machine learning researchers, offering a philosophical critique rather than incremental technical improvements.

The paper critiques common fairness definitions in machine learning from a consequentialist ethical perspective, highlighting tradeoffs like who counts and the value of the distant future, and provides a machine learning viewpoint on consequentialism.

Recent work on fairness in machine learning has primarily emphasized how to define, quantify, and encourage "fair" outcomes. Less attention has been paid, however, to the ethical foundations which underlie such efforts. Among the ethical perspectives that should be taken into consideration is consequentialism, the position that, roughly speaking, outcomes are all that matter. Although consequentialism is not free from difficulties, and although it does not necessarily provide a tractable way of choosing actions (because of the combined problems of uncertainty, subjectivity, and aggregation), it nevertheless provides a powerful foundation from which to critique the existing literature on machine learning fairness. Moreover, it brings to the fore some of the tradeoffs involved, including the problem of who counts, the pros and cons of using a policy, and the relative value of the distant future. In this paper we provide a consequentialist critique of common definitions of fairness within machine learning, as well as a machine learning perspective on consequentialism. We conclude with a broader discussion of the issues of learning and randomization, which have important implications for the ethics of automated decision making systems.

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