TL;DR
This paper critically examines policies requiring human oversight of government algorithms, revealing they often fail in oversight effectiveness and may legitimize flawed algorithms, suggesting a shift to institutional oversight with democratic review.
Contribution
It identifies fundamental flaws in current human oversight policies and proposes a novel institutional oversight framework with empirical and democratic validation stages.
Findings
People are generally unable to effectively oversee algorithms.
Current policies legitimize faulty algorithms without addressing core issues.
Human oversight policies may enable shirking accountability.
Abstract
As algorithms become an influential component of government decision-making around the world, policymakers have debated how governments can attain the benefits of algorithms while preventing the harms of algorithms. One mechanism that has become a centerpiece of global efforts to regulate government algorithms is to require human oversight of algorithmic decisions. Despite the widespread turn to human oversight, these policies rest on an uninterrogated assumption: that people are able to effectively oversee algorithmic decision-making. In this article, I survey 41 policies that prescribe human oversight of government algorithms and find that they suffer from two significant flaws. First, evidence suggests that people are unable to perform the desired oversight functions. Second, as a result of the first flaw, human oversight policies legitimize government uses of faulty and…
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Videos
The Flaws of Policies Requiring Human Oversight of Government Algorithms· youtube
