| Literature DB >> 29160165 |
Abstract
Self-driving cars, a quintessentially 'smart' technology, are not born smart. The algorithms that control their movements are learning as the technology emerges. Self-driving cars represent a high-stakes test of the powers of machine learning, as well as a test case for social learning in technology governance. Society is learning about the technology while the technology learns about society. Understanding and governing the politics of this technology means asking 'Who is learning, what are they learning and how are they learning?' Focusing on the successes and failures of social learning around the much-publicized crash of a Tesla Model S in 2016, I argue that trajectories and rhetorics of machine learning in transport pose a substantial governance challenge. 'Self-driving' or 'autonomous' cars are misnamed. As with other technologies, they are shaped by assumptions about social needs, solvable problems, and economic opportunities. Governing these technologies in the public interest means improving social learning by constructively engaging with the contingencies of machine learning.Entities:
Keywords: autonomous vehicles; machine learning; responsible innovation; self-driving cars; social learning
Mesh:
Year: 2017 PMID: 29160165 DOI: 10.1177/0306312717741687
Source DB: PubMed Journal: Soc Stud Sci ISSN: 0306-3127 Impact factor: 3.885