A narrowing of AI research?
- URL: http://arxiv.org/abs/2009.10385v4
- Date: Tue, 11 Jan 2022 06:19:32 GMT
- Title: A narrowing of AI research?
- Authors: Joel Klinger, Juan Mateos-Garcia and Konstantinos Stathoulopoulos
- Abstract summary: We study the evolution of the thematic diversity of AI research in academia and the private sector.
We measure the influence of private companies in AI research through the citations they receive and their collaborations with other institutions.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The arrival of deep learning techniques able to infer patterns from large
datasets has dramatically improved the performance of Artificial Intelligence
(AI) systems. Deep learning's rapid development and adoption, in great part led
by large technology companies, has however created concerns about a premature
narrowing in the technological trajectory of AI research despite its
weaknesses, which include lack of robustness, high environmental costs, and
potentially unfair outcomes. We seek to improve the evidence base with a
semantic analysis of AI research in arXiv, a popular pre-prints database. We
study the evolution of the thematic diversity of AI research, compare the
thematic diversity of AI research in academia and the private sector and
measure the influence of private companies in AI research through the citations
they receive and their collaborations with other institutions. Our results
suggest that diversity in AI research has stagnated in recent years, and that
AI research involving the private sector tends to be less diverse and more
influential than research in academia. We also find that private sector AI
researchers tend to specialise in data-hungry and computationally intensive
deep learning methods at the expense of research involving other AI methods,
research that considers the societal and ethical implications of AI, and
applications in sectors like health. Our results provide a rationale for policy
action to prevent a premature narrowing of AI research that could constrain its
societal benefits, but we note the informational, incentive and scale hurdles
standing in the way of such interventions.
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