Artificial Intelligence

Technological disruption and the backfire objection to predictive policing

When:
Friday, March 12, 2021, 11:00am - 12:00pm PSTiCal
Where:
virtually: https://usc.zoom.us/j/7042850182
This event is open to the public.
Type:
AI Seminar
Speaker:
Ryan Jenkins (Cal Poly, San Luis Obispo)
Video:
https://usc.zoom.us/j/7042850182
Description:

Abstract: Predictive policing is the practice of using artificial intelligence to predict future crimes. Often, this involves predicting their timing and location—so-called place-based applications—but it can also involve identifying individuals who are thought to be at particularly high risk of committing crimes, as in Chicago’s “Heat List” (Gorner 2013). In this paper, I propose a new objection to predictive policing that does not depend on its accuracy or bias. I will argue a policy of using predictive policing could be morally flawed because it erodes public trust in a way that, in the long run, can undermine cooperation between police and communities and cause other impediments that hinder the functioning of the criminal justice system. This paper applies a lesson long appreciated in the philosophy of technology: that new technologies, which purport to accomplish a goal more efficiently or successfully than before, can create externalities that exacerbate serious problems elsewhere in their complex social context.

Biography: Dr. Ryan Jenkins is an associate professor of philosophy and a senior fellow at the Ethics + Emerging Sciences Group at California Polytechnic State University in San Luis Obispo. He studies the ethics of emerging technologies, especially automation, cyber war, autonomous weapons, and driverless cars. His work has appeared in journals such as Techne, Ethical Theory and Moral Practice, and the Journal of Military Ethics, as well as public fora including the Washington Post, Slate and Forbes.

Talk will be available via live stream on March 12, 2021. Zoom link: https://usc.zoom.us/j/7042850182

Talk will not be recorded. 

« Return to Events