Technological Opacity, Predictability, and Self-Driving Cars

61 Pages Posted: 12 Aug 2016 Last revised: 8 Nov 2016

See all articles by Harry Surden

Harry Surden

University of Colorado Law School

Mary-Anne Williams

University of Technology Sydney (UTS)

Date Written: March 14, 2016

Abstract

Autonomous or “self-driving” cars are vehicles that drive themselves without human supervision or input. Because of safety benefits that they are expected to bring, autonomous vehicles are likely to become more common. Notably, for the first time, people will share a physical environment with computer-controlled machines that can both direct their own activities and that have considerable range of movement. This represents a distinct change from our current context. Today people share physical spaces either with machines that have free range of movement but are controlled by people (e.g. automobiles), or with machines that are controlled by computers but highly constrained in their range of movement (e.g. elevators). The movements of today’s machines are thus broadly predictable. The unrestricted, computer-directed movement of autonomous vehicles is an entirely novel phenomenon that may challenge certain unarticulated assumptions in our existing legal structure.

Problematically, the movements of autonomous vehicles may be less predictable to the ordinary people who will share their physical environment — such as pedestrians — than the comparable movements of human-driven vehicles. Today, a great deal of physical harm that might otherwise occur is likely avoided through humanity’s collective ability to predict the movements of other people. In anticipating the behavior of others, we employ what psychologists call a “theory of mind.” Theory of mind cognitive mechanisms that allow us to extrapolate from our own internal mental states in order to estimate what others are thinking or likely to do. These cognitive systems allow us to make instantaneous, unconscious judgments about the likely actions of people around us, and therefore, to keep ourselves safe in the driving context. However, the theory-of-mind mechanisms that allow us to accurately model the minds of other people and interpret their communicative signals of attention and intention will be challenged in the context of non-human, autonomous moving entities such as self-driving cars.

This article explains in detail how self-driving vehicles work and how their movements may be hard to predict. It then explores the role that law might play in fostering more predictable autonomous moving systems such as self-driving cars, robots, and drones.

Keywords: self-driving cars, autonomous, robotics, robot, autonomous vehicles, automation, tort law, prediction, Google

Suggested Citation

Surden, Harry and Williams, Mary-Anne, Technological Opacity, Predictability, and Self-Driving Cars (March 14, 2016). Cardozo Law Review, Vol. 38, 2016, Available at SSRN: https://ssrn.com/abstract=2747491 or http://dx.doi.org/10.2139/ssrn.2747491

Harry Surden (Contact Author)

University of Colorado Law School ( email )

401 UCB
Boulder, CO 80309
United States

HOME PAGE: http://lawweb.colorado.edu/profiles/profile.jsp?id=316

Mary-Anne Williams

University of Technology Sydney (UTS)

15 Broadway, Ultimo
PO Box 123
Sydney, NSW 2007
Australia

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