Inferring Work Task Automatability from AI Expert Evidence

Paul Duckworth, L. Graham, Michael A. Osborne
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引用次数: 10

Abstract

Despite growing alarm about machine learning technologies automating jobs, there is little good evidence on what activities can be automated using such technologies. We contribute the first dataset of its kind by surveying over 150 top academics and industry experts in machine learning, robotics and AI, receiving over 4,500 ratings of how automatable specific tasks are today. We present a probabilistic machine learning model to learn the patterns connecting expert estimates of task automatability and the skills, knowledge and abilities required to perform those tasks. Our model infers the automatability of over 2,000 work activities, and we show how automation differs across types of activities and types of occupations. Sensitivity analysis identifies the specific skills, knowledge and abilities of activities that drive higher or lower automatability. We provide quantitative evidence of what is perceived to be automatable using the state-of-the-art in machine learning technology. We consider the societal impacts of these results and of task-level approaches.
从人工智能专家证据推断工作任务的可自动化性
尽管越来越多的人担心机器学习技术会使工作自动化,但几乎没有充分的证据表明,哪些活动可以利用这种技术实现自动化。我们通过调查机器学习、机器人和人工智能领域的150多名顶级学者和行业专家,获得了超过4500个关于当今特定任务自动化程度的评分,从而贡献了第一个此类数据集。我们提出了一个概率机器学习模型来学习连接专家对任务自动化程度的估计和执行这些任务所需的技能、知识和能力的模式。我们的模型推断了超过2000种工作活动的自动化程度,我们展示了不同类型的活动和职业的自动化程度是如何不同的。敏感性分析确定驱动更高或更低自动化的活动的特定技能、知识和能力。我们提供定量证据,证明使用最先进的机器学习技术可以实现自动化。我们考虑这些结果和任务级方法的社会影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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