论文标题

预测AI进度:研究议程

Forecasting AI Progress: A Research Agenda

论文作者

Gruetzemacher, Ross, Dorner, Florian, Bernaola-Alvarez, Niko, Giattino, Charlie, Manheim, David

论文摘要

预测AI进度对于减少不确定性至关重要,以便适当地计划AI安全和AI治理的研究工作。尽管这通常被认为是一个重要的话题,但对此几乎没有工作,并且没有发布该领域的文档和客观概述。此外,该领域非常多样化,关于其方向没有公开的共识。本文介绍了用于预测AI进度的研究议程的发展,该进步利用Delphi技术来激发和汇总专家对确定哪些问题和方法的意见。提出了Delphi的结果;本文的其余部分遵循这些结果的结构,简要审查了相关文献,并建议每个主题的未来工作。专家指出,应考虑各种方法来预测AI进度。此外,专家们确定了既普遍又是完全独有的问题,这是预测AI进展的问题。一些最高优先级主题包括验证(部分未解决的)预测,如何制作预测动作引导和不同性能指标的质量。尽管统计方法似乎更有希望,但也有人认识到补充判断技术可能是非常有益的。

Forecasting AI progress is essential to reducing uncertainty in order to appropriately plan for research efforts on AI safety and AI governance. While this is generally considered to be an important topic, little work has been conducted on it and there is no published document that gives and objective overview of the field. Moreover, the field is very diverse and there is no published consensus regarding its direction. This paper describes the development of a research agenda for forecasting AI progress which utilized the Delphi technique to elicit and aggregate experts' opinions on what questions and methods to prioritize. The results of the Delphi are presented; the remainder of the paper follow the structure of these results, briefly reviewing relevant literature and suggesting future work for each topic. Experts indicated that a wide variety of methods should be considered for forecasting AI progress. Moreover, experts identified salient questions that were both general and completely unique to the problem of forecasting AI progress. Some of the highest priority topics include the validation of (partially unresolved) forecasts, how to make forecasting action-guiding and the quality of different performance metrics. While statistical methods seem more promising, there is also recognition that supplementing judgmental techniques can be quite beneficial.

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