机器如何理解命令的意图

IF 1 Q3 ENGINEERING, MULTIDISCIPLINARY
Maarten P. D. Schadd, Anne Merel Sternheim, R. Blankendaal, Martin van der Kaaij, Olaf H. Visker
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引用次数: 1

摘要

随着最近的技术进步,指挥官在任务规划期间要求支持人工智能(AI)系统。未来的人工智能系统可能会测试大范围的行动方案(COA),并使用模拟器在战争游戏中测试每个COA的有效性。然而,COA的有效性取决于指挥官的意图。问题来了,机器能在多大程度上理解指挥官的意图?目前,意图必须手动编程,耗费宝贵的时间。因此,我们测试了工具是否能够理解自由编写的意图,以便指挥官能够以最小的努力与AI系统合作。这项工作包括让一个工具理解指挥官的语言和语法,从而在意图中找到相关信息;为指挥官创建意图的(视觉)表示(简要说明);并创建一个基于意图的可计算的有效性度量。我们提出了一种新的定量评价指标来理解指挥官的意图,并对第11航空机动旅的排长进行了定性测试。他们对理解的程度感到非常惊讶,并对验证反馈表示赞赏。可计算的有效性度量是弥合指挥意图和军事任务规划机器学习之间差距的第一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How a machine can understand the command intent
With recent technological advances, commanders request the support of artificial intelligence (AI)-enabled systems during mission planning. Future AI systems may test a wide range of courses of action (COAs) and use a simulator to test each COA’s effectiveness in a war game. The COA’s effectiveness is however dependent on the commanders’ intent. The question arises to what degree a machine can understand the commanders’ intent? Currently, the intent has to be programmed manually, costing valuable time. Therefore, we tested whether a tool can understand a freely written intent so that a commander can work with an AI system with minimal effort. The work consisted of letting a tool understand the language and grammar of the commander to find relevant information in the intent; creating a (visual) representation of the intent to the commander (back brief); and creating an intent-based computable measure of effectiveness. We proposed a novel quantitative evaluation metric for understanding the commanders’ intent and tested the results qualitatively with platoon commanders of the 11th Airmobile Brigade. They were positively surprised with the level of understanding and appreciated the validation feedback. The computable measure of effectiveness is the first step toward bridging the gap between the command intent and machine learning for military mission planning.
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来源期刊
CiteScore
2.80
自引率
12.50%
发文量
40
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