The Algorithm Audit: Scoring the Algorithms That Score Us

In recent years, the ethical impact of AI has been increasingly scrutinized, with public scandals emerging over biased outcomes, lack of transparency, and the misuse of data. This has led to a growing mistrust of AI and increased calls for mandated ethical audits of algorithms. Current proposals for ethical assessment of algorithms are either too high level to be put into practice without further guidance, or they focus on very specific and technical notions of fairness or transparency that do not consider multiple stakeholders or the broader social context. In this article, we present an auditing framework to guide the ethical assessment of an algorithm. The audit instrument itself is comprised of three elements: a list of possible interests of stakeholders affected by the algorithm, an assessment of metrics that describe key ethically salient features of the algorithm, and a relevancy matrix that connects the assessed metrics to stakeholder interests. The proposed audit instrument yields an ethical evaluation of an algorithm that could be used by regulators and others interested in doing due diligence, while paying careful attention to the complex societal context within which the algorithm is deployed.

Focus: Methods or Design
Source: Big Data and Society
Redability: Expert
Type: PDF Article
Open Source: No
Keywords: Algorithm audits, algorithm ethics, ethics, ethics of AI, machine learning, machine learning and ethics
Learn Tags: Design/Methods Ethics Fairness Framework Solution
Summary: An article that proposes an auditing framework to guide the ethical assessment of an algorithm.