Publication Date
2020
Document Type
Article
Abstract
With rising caseloads, review systems are increasingly taxed, stymieing traditional methods of case screening. We propose an automated solution: predictive models of legal decisions can be used to identify and focus review resources on outlier decisions—those decisions that are most likely the product of biases, ideological extremism, unusual moods, and carelessness and thus most at odds with a court’s considered, collective judgment. By using algorithms to find and focus human attention on likely injustices, adjudication systems can largely sidestep the most serious objections to the use of algorithms in the law: that algorithms can embed racial biases, deprive parties of due process, impair transparency, and lead to “technological–legal lock-in.”
Publication Title
SMU Science & Technology Law Review
Volume
23
Issue
2
Recommended Citation
Hannah S. Lacqueur & Ryan W. Copus,
Machines Finding Injustice,
23
SMU Science & Technology Law Review
151
(2020).
Available at:
https://irlaw.umkc.edu/faculty_works/215