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Full-Text Articles in Law
Algorithmic Opacity, Private Accountability, And Corporate Social Disclosure In The Age Of Artificial Intelligence, Sylvia Lu
Vanderbilt Journal of Entertainment & Technology Law
Today, firms develop machine-learning algorithms to control human decisions in nearly every industry, creating a structural tension between commercial opacity and democratic transparency. In many of their commercial applications, advanced algorithms are technically complicated and privately owned, which allows them to hide from legal regimes and prevents public scrutiny. However, they may demonstrate their negative effects—erosion of democratic norms, damages to financial gains, and extending harms to stakeholders—without warning. Nevertheless, because the inner workings and applications of algorithms are generally incomprehensible and protected as trade secrets, they can be completely shielded from public surveillance. One of the solutions to this …
Reconciling Risk And Equality, Christopher Slobogin
Reconciling Risk And Equality, Christopher Slobogin
Vanderbilt Law School Faculty Publications
States have increasingly resorted to statistically-derived risk algorithms to determine when diversion from prison should occur, whether sentences should be enhanced, and the level of security and treatment a prisoner requires. The federal government has jumped on the bandwagon in a big way with the First Step Act, which mandated that a risk assessment instrument be developed to determine which prisoners can be released early on parole. Policymakers are turning to these algorithms because they are thought to be more accurate and less biased than judges and correctional officials, making them useful tools for reducing prison populations through identification of …