论文标题
AI研究的狭窄?
A narrowing of AI research?
论文作者
论文摘要
能够从大型数据集推断模式的深度学习技术的到来大大改善了人工智能(AI)系统的性能。但是,深度学习的快速发展和采用在大型技术公司的巨大领导下,人们对AI研究的技术轨迹的过早狭窄引起了人们的担忧,尽管其弱点,包括缺乏稳健性,高昂的环境成本以及潜在的不公平成果。我们试图通过对ARXIV的AI研究的语义分析来改善证据基础,ARXIV是一个流行的预印数据库。我们研究了AI研究的主题多样性的演变,比较了学术界AI研究和私营部门的主题多样性,并通过他们收到的引用以及与其他机构的合作来衡量私营公司在AI研究中的影响。我们的结果表明,近年来,AI研究的多样性停滞不前,而涉及私营部门的AI研究往往比学术界的研究更不那么多样化,更具影响力。我们还发现,私营部门AI研究人员倾向于专注于渴望数据和计算密集的深度学习方法,而牺牲了涉及其他AI方法的研究,这些研究研究了AI的社会和道德含义,以及在健康等领域中的应用。我们的结果为防止AI研究过早缩小的政策行动提供了理由,该研究可能会限制其社会利益,但我们注意到,信息,激励和规模的障碍阻碍了这种干预措施。
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.