论文标题

知识综合的知情是国家安全的AI

Knowledge-Integrated Informed AI for National Security

论文作者

Myne, Anu K., Leahy, Kevin J., Soklaski, Ryan J.

论文摘要

人工智能技术的状态具有丰富的历史,可以追溯到几十年来,并在当今的爆炸性复兴之前进行了两次后卫,这在很大程度上被认为是数据驱动的技术。尽管AI技术已经并且继续成为跨领域和行业影响的越来越多的主流,但并非没有几个缺点,弱点和潜力引起不希望的影响。人工智能技术具有许多方法和变体,但是可以根据他们捕获的知识程度以及所需的数据进行分类。到目前为止,在整个AI中出现了两个广泛的类别:(1)主要(通常是完全是数据驱动的技术),同时几乎没有知识,以及(2)主要利用知识并依赖数据较少依赖数据的技术。现在,第三类开始出现利用数据和知识,其中一些人称为“知情AI”。这第三类可以是国家安全领域内的游戏规则改变者,那里有足够的科学和领域特定知识,准备好被杠杆化,并且纯粹由数据驱动的AI会导致严重的不必要后果。 该报告从对AI方法进行彻底探索中分享了调查结果,该方法利用数据以及原则性和/或实践知识,我们称为“知识融合的知情AI”。具体来说,我们回顾了集成在深度学习和强化学习管道中的知识的示例,并注意了它们提供的绩效增长。我们还讨论了跨知识融合的知情AI的明显贸易空间,以及观察到的突出问题,这些问题表明了值得将来的研究方向。最重要的是,该报告表明,知识融合的知情人士的优势如何使国家安全领域受益。

The state of artificial intelligence technology has a rich history that dates back decades and includes two fall-outs before the explosive resurgence of today, which is credited largely to data-driven techniques. While AI technology has and continues to become increasingly mainstream with impact across domains and industries, it's not without several drawbacks, weaknesses, and potential to cause undesired effects. AI techniques are numerous with many approaches and variants, but they can be classified simply based on the degree of knowledge they capture and how much data they require; two broad categories emerge as prominent across AI to date: (1) techniques that are primarily, and often solely, data-driven while leveraging little to no knowledge and (2) techniques that primarily leverage knowledge and depend less on data. Now, a third category is starting to emerge that leverages both data and knowledge, that some refer to as "informed AI." This third category can be a game changer within the national security domain where there is ample scientific and domain-specific knowledge that stands ready to be leveraged, and where purely data-driven AI can lead to serious unwanted consequences. This report shares findings from a thorough exploration of AI approaches that exploit data as well as principled and/or practical knowledge, which we refer to as "knowledge-integrated informed AI." Specifically, we review illuminating examples of knowledge integrated in deep learning and reinforcement learning pipelines, taking note of the performance gains they provide. We also discuss an apparent trade space across variants of knowledge-integrated informed AI, along with observed and prominent issues that suggest worthwhile future research directions. Most importantly, this report suggests how the advantages of knowledge-integrated informed AI stand to benefit the national security domain.

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