The Legal Duty to Search for Less Discriminatory Algorithms
Emily Black, Logan Koepke, Pauline Kim, Solon Barocas, Mingwei Hsu

TL;DR
This paper argues that developers of predictive algorithms in civil rights contexts should have a legal duty to reasonably search for less discriminatory models, based on the concept of model multiplicity and legal precedents.
Contribution
It introduces the idea of a legal duty to search for less discriminatory algorithms, linking model multiplicity with legal standards for discrimination liability.
Findings
Model multiplicity allows for equally accurate, less discriminatory models.
Legal doctrine recognizes the importance of less discriminatory alternatives.
A duty of reasonable search for LDAs could improve fairness in algorithm deployment.
Abstract
Work in computer science has established that, contrary to conventional wisdom, for a given prediction problem there are almost always multiple possible models with equivalent performance--a phenomenon often termed model multiplicity. Critically, different models of equivalent performance can produce different predictions for the same individual, and, in aggregate, exhibit different levels of impacts across demographic groups. Thus, when an algorithmic system displays a disparate impact, model multiplicity suggests that developers could discover an alternative model that performs equally well, but has less discriminatory impact. Indeed, the promise of model multiplicity is that an equally accurate, but less discriminatory algorithm (LDA) almost always exists. But without dedicated exploration, it is unlikely developers will discover potential LDAs. Model multiplicity and the…
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Taxonomy
TopicsLaw, AI, and Intellectual Property · Ethics and Social Impacts of AI
